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Citation: Clare, A., Seaton, J., Smith, P. N. and Thomas, S. (2014). Trend following, risk
parity and momentum in commodity futures. International Review of Financial Analysis, 31,
pp. 1-12. doi: 10.1016/j.irfa.2013.10.001
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Trend Following, Risk Parity and Momentum in Commodity
Futures
Andrew Clare*, James Seaton*, Peter N. Smith† and Stephen Thomas*
*Cass Business School, London
†University of York, UK
This Version: 11th December, 2012
Abstract
We show that combining momentum and trend following strategies for individual
commodity futures can lead to portfolios which offer attractive risk adjusted returns which
are superior to simple momentum strategies; when we expose these returns to a wide array of
sources of systematic risk we find that robust alpha survives. Experimenting with risk parity
portfolio weightings has limited impact on our results though in particular is beneficial to
long-short strategies; the marginal impact of applying trend following methods far outweighs
momentum and risk parity adjustments in terms of risk-adjusted returns and limiting
downside risk. Overall this leads to an attractive strategy for investing in commodity futures
and emphasises the importance of trend following as an investment strategy in the
commodity futures context.
Key words: trend following, momentum, risk parity, equally-weighted, portfolios,
commodity futures.
1
Electronic copy available at: http://ssrn.com/abstract=2126813
1. Introduction
In this paper we contribute to the growing evidence that applying a trend following
investment strategy to a variety of asset classes leads to enhanced risk adjusted returns. In
particular we show that combining momentum and trend following strategies for individual
commodity futures can lead to portfolios which offer attractive risk adjusted returns; when
we expose these returns to a wide array of sources of systematic risk we find that robust alpha
survives. Experimenting with risk parity portfolio weightings has limited impact on our
results though is beneficial to long-short strategies; the marginal benefit of applying trend
following methods far outweighs momentum and risk parity adjustments in terms of riskadjusted returns and limiting downside risk.
Momentum strategies involve ranking assets based on their past return (often the
previous twelve months) and then buying the winners and selling the losers. Momentum is
one anomaly in the financial literature that has been demonstrated to offer enhanced future
returns. Many studies since Jegadeesh and Titman (1993) have focussed on momentum at
the individual stock level. More recently Asness et al (2012) find momentum effects within a
wide variety of asset classes. In terms of commodity futures, Miffre and Rallis (2007) and
Erb and Harvey (2006) were amongst the first to show that momentum strategies earn
significant positive excess returns. The purpose of this paper is to show how a momentum
strategy for commodity futures which also employs a trend following overlay can
significantly enhance investment performance relative to both long only and long-short
momentum strategies.
Trend following has been widely used in futures markets, particularly commodities,
for many decades (see Ostgaard, 2008). Trading signals can be generated by a variety of
methods such as moving average crossovers and breakouts with the aim of determining the
trend in prices. Long positions are adopted when the trend is positive and short positions, or
cash, are taken when the trend is negative. As trend following is generally rules-based it can
aid investors since losses are mechanically cut short and winners left to run. This is
frequently the reverse of investors' natural instincts. The return on cash is also an important
factor either as collateral in futures or as the risk-off asset for long-only methods. Examples
of the effectiveness of trend following for commodity futures, amongst others, are Szacmary
et al (2010) and Hurst et al (2010). As with momentum strategies, much of the research is
2
Electronic copy available at: http://ssrn.com/abstract=2126813
focused on equities with Wilcox and Crittenden (2005) and ap Gwilym et al (2010) as
examples. Recent attempts at explaining the success of trend following include Faber (2007)
who uses trend following as a means of tactical asset allocation and demonstrates that it is
possible to form a portfolio that has equity-level returns with bond-level volatility. Ilmanen
(2011) offers a variety of explanations as to why trend following may have been successful
historically, including investor under-reaction to news and herding behaviour.
A few studies have sought to combine the momentum and trend-following strategies.
Faber (2010) examines momentum and a form of trend following in equity sector investing in
the United States. Antonacci (2012) analyses the returns from momentum trading of pairs of
investments and then applies a quasi-trend following filter to ensure that the winners have
exhibited positive returns. This is based on the argument that extreme past returns or
volatility should be taken account of in identifying a risk factor to increase momentum
profitability. The risk-adjusted performance of these approaches appears to be a significant
improvement on benchmark buy-and-hold portfolios.
Bandarchuk and Hilscher (2012)
present a similar strategy arguing that many of the characteristics that have been identified as
being correlated with, or explanations for, the presence of enhanced momentum profits are
just related to extreme past returns. Conditioning on this effect, they find no role for
characteristics such as book to market (Sagi and Seasholes, 2007), forecast dispersion
(Verardo, 2009) and credit rating (Amramov et al, 2007) in raising momentum profitability.
In this paper we direct attention to the ability of a trend following rule to enhance momentum
profitability in commodity futures.
Behavioural and rational asset pricing explanations for momentum and trend
following have been offered in the literature. Hong and Stein (1999) is representative of
behavioural approaches which could generate momentum or trend following behaviour whilst
Sagi and Seasholes (2007) examines trend behaviour in single risky assets which could be
applicable to the construction of a momentum portfolio.
Momentum studies for a range of markets typically weight equally all assets chosen
in the winners (or losers) portfolio. Following Ilmanen (2011), we argue that this is not the
ideal approach, especially in the case of commodity futures, and that investors would be
better served by volatility weighting past returns. Failing to do this leads to the most volatile
assets spending a disproportionate amount of time in the highest and lowest momentum
3
Electronic copy available at: http://ssrn.com/abstract=2126813
portfolios. Finally, in this paper we also examine how risk parity weighting affects strategy
performance.
Section 2 contains a description of our data while in Section 3 we examine the role
of momentum and trend following investment strategies along with different portfolio
formation techniques using both risk parity and equal weighting portfolio construction
methods;Section 4 presents the empirical results for applying these methods to our
commodites’data while in Section 5 we control for both transactions’ costs and explore
sources of systematic risk which may be present in our analysis.Section 6 concludes.
2. Data and Methods
The commodity futures data examined in this paper is the full set of DJ-UBS commodity
excess return indices. These returns are inclusive of spot and roll gains but assume no returns
on collateral put up 1. The full data period runs from January 1991 to June 2011. The period
of study is 1992-2011 with all observations being monthly data. The first year of data is used
to calculate trend-following signals and momentum rankings. Throughout the paper all values
are total returns (unless specified) and are in US dollars.
The 28 commodities are:
A summary of the properties of the returns series is shown in Table 1. The spread of
variability and return is notable with some commodities such as natural gas and coffee
showing a volatility of returns substantially higher than others, along with severe drawdowns
and often negative risk-adjusted returns.The Sharpe ratios are generally unattractive as
individual asset investments.There is also clear evidence of non-normality in returns.
1
A full description of the construction of the indices can be found in Dow-Jones (2012).
4
3. Investment Strategies in Commodity Futures:Portfolio Weighting,Momentum and
Trend Following
We begin by reviewing two key aspects of portfolio formation for commodity futures,
namely the justification for using trend following and/or momentum strategies in selecting
individual assets together with the method of weighting those assets in the portfolio.
3.1 Momentum and Trend Following Strategies
A momentum strategy is a simple trading rule which involves taking a long investment
position in rank-ordered, relatively good performing assets (winners) and a short position in
those which perform relatively poorly (losers) over the same investment horizon. It is an
explicit bet on the continuation of past relative performance into the future. Trend following,
although closely related to momentum investing, is fundamentally different in that it does not
order the past performance of the assets of interest, though it does rely on a continuation of,
or persistence in, price behaviour based upon technical analysis. There is a tendency at times
to use the terms ‘momentum’ and ‘trend following’ almost interchangeably, yet the former
has a clear cross sectional element to it in that the formation of relative performance rankings
is across the universe of stocks (or other securities) over a specific period of time, only to be
continued in a time-series sense and eventually mean reverting after a successful ‘winning’
holding period. It should also be noted that momentum studies usually use monthly data
whereas trend following rules are applied to all frequencies of data.
The underlying economic justification for trend following rules lies in behavioural
finance tenets such as those relating to herding, disposition, confirmation effects, and
representativeness biases (for example see Asness et al (2012) or Ilmanen (2011)). At times
information travels slowly, especially if assets are illiquid and/or if there is high information
uncertainty; this leads to investor underreaction. If investors are reluctant to realise small
losses then momentum is enhanced via the disposition effect. Indeed both of these
phenomena relate to the difference between the current price and the purchase price: poorly
anchored prices allow more leeway for sentiment-driven changes. And there is now growing
academic evidence to suggest that these trend following strategies can produce attractive,
risk-adjusted returns (including for commodities as shown by Szakmary et al (2010), for
example). However, such findings are not universal: for example, see Park and Irwin (2007)
in their review of 9 studies using trading rules for commodity futures. Ilmanen (2011)
5
suggests that the typical Sharpe ratio for a single asset using a trend following strategy lies
between 0 and 0.5 but rises to between 0.5 and 1 when looking at a portfolio.
3.2 Risk Parity vs Equal Portfolio Weights
The first issue to deal with in forming portfolios of commodity futures is that of weights of
individual assets. The vast differences in the volatility of returns to the commodities that we
examine lead to the question of whether the portfolios formed based on a trend following or
momentum strategy (or indeed any strategy, for that matter), are dominated by the volatility
of the returns of individual commodities with the most extreme volatilities and drawdowns.
In the data examined here, the commodities with the highest return volatility are Natural Gas,
Coffee, Nickel, Unleaded Gas and Sugar, (see Table 1) In the simple equal-weighted 12month momentum strategy portfolio evaluated below these commodities are over-represented
when compared with equal average representation by 27% compared with the lowest
volatility commodities Feeder Cattle, Live Cattle, Gold, Aluminium and Platinum. The
resolution to this problem of reduced diversity of portfolio holdings that has developed in
both markets and in the literature is risk-parity weighting 2. This employs volatility weights
rather than equal, market value or rule-of-thumb weights (such as the 60/40 equity/bond
weights traditionally employed). The idea behind this is to weight assets inversely by their
contribution to portfolio risk; this has the effect of overweighting low risk assets and in
practice leads to massively overweight bond components of equity/bond portfolios in recent
years (see Montier, 2010) and ensuing superior performance due to the bull market in bonds.
In this paper we employ realized volatility measures for constructing the volatility
weights using a spread of windows of days over which volatility is computed. This type of
measure has been shown by Andersen and Bollerslev (1998), amongst others, to provide an
unbiased and efficient measure of underlying volatility3. Given the monthly frequency of the
returns data, we compute realized volatility measures for between 10 and 120 days prior to
2
See Dalio (2004) for an early justification for risk-parity weighting and Asness et al (2011) for a recent
argument..
3
Some alternatives are canvassed by Baltas and Kosowski (2011).
6
the date of the measurement of returns. The risk parity portfolios have the characteristic of
increasing the relative diversity of portfolio holding of individual commodity futures. The 60day risk-parity momentum portfolio shows an over-representation of high versus low
volatility commodities across the whole dataset of only 2% when compared with equal
average representation
The baseline portfolio returns against which we will evaluate all of the strategies in this paper
are the equal weighted and risk parity long-only portfolios of all commodities whose
characteristics are shown in Table 2. It can be seen that the average annual return in excess of
the 3-month US Treasury Bill rate is 4.45% for the equally weighted portfolio. Average
returns are somewhat lower for the basic risk parity portfolios, although both are significantly
positive given the size of the Newey-West t-statistics employed throughout this paper. The
trade-off of return against volatility is shown by the slightly lower volatility in risk parity
portfolios. The Sharpe ratios for the equally weighted and risk parity portfolios are similar as
indeed are the monthly maximum and minimum returns and maximum drawdown:there
would seem to be little benefit in using risk parity as a portfolio construction technique for
commodity futures.
Another metric for assessing the performance of the strategies examined in this paper
is their returns in recent periods of market turbulence. This approach is proposed by Hurst,
Johnson and Ooi (2010) in their assessment of risk parity portfolios. The periods we consider
are the surprise increase in Fed interest rates(1994), the period of the Tech boom and
separately bust(1999-2004), the period of easy credit and finally the credit crunch. Average
returns of the baseline strategies are shown in Table 3 and show that the risk parity strategies
have lower absolute average returns than the equally weighted strategy. The most pronounced
differences between the two across the two most recent periods were when risk parity returns
were somewhat lower during the period of easy credit and were a full 40 basis points more
during the credit crunch. Below we monitor these measures along with more standard
summary statistics.
4. Results
4.1 The Returns from Trend Following in Commodity Futures
7
We consider a trend following rule that is popular with investors which is based on simple
monthly moving averages of returns 4. The buy signal occurs when the individual commodity
future return moves above the average where we consider moving averages ranging from 6 to
12 months. The intuition behind the simple trend following approach is that while current
market price is most certainly the most relevant data point, it is less certain whether the most
appropriate comparison is a month or a year ago, (Ilmanen, 2011). Taking a moving average
therefore dilutes the significance of any particular observation. With each of the rules, if the
rule ‘says’ invest we earn the return on the commodity future over the relevant holding period
which we fix at one month; however when the return ‘says’ do not invest we earn the return
on cash over the holding period of one month. The rules are therefore binary: we either earn
the return on the risky asset or the return on cash. In this case this return is the Treasury bill
interest rate which has zero excess return. Previous research including Annaert, van Osslaer
and Verstraete (2009) for equities, for example, suggests better performance from the longer
moving averages examined in this paper.
Table 4 presents our results for both long positions in panel A and long-short
positions in panel B. The long positions return either the one month excess return or zero
depending on the trend following signal. The long-short strategies allow for short positions
for those periods when the trend following buy signal is negative. All strategies show a
positive excess return which is significantly higher than those for the passive positions shown
in Table 2. Shorter length moving average signals provide a higher return than longer with
the highest return for the 7-month moving average signal. These average excess returns are
all significantly larger than zero. They are not, however, statistically significantly different
from one another. The long only strategies provide the highest Sharpe ratio reflecting the
generally rising market over the sample period and at around 0.7 are comfortably in the range
suggested by Ilmanen (2011) of 0.5-1.0. Note that the annualised volatility without trend
following in Table 2 at 12.79% for the equally weighted portfolio is roughly 50% more than
the trend following equivalent(at around 7.94% in Table 4):this elevated return with much
lower volatility (often a half to a third of a buy and hold equivalent) is a typical finding for a
range of asset classes and historical periods (see Faber, (2007) and ap Gwilym et al, (2010)).
4
Ostgaard (2008) introduced a range of trend following rules for commodity futures.
8
Note also that the maximum drawdown for trend following portfolios is roughly one-third
that of long only equal weighting or risk parity strategies: again this is a typical finding that
may be particularly desirable to investors.In addition,long-short strategies do provide even
higher average returns which are generally more positively skewed,though the Sharpe ratios
are inferior to the long-only case(see Table 4).Further in the most recent period of market
turbulence during the credit crisis, trend following provided average returns of 0.64% per
annum for long only, compared to -1.43% with no trend following (Table 3)
4.2 The Returns from Momentum Investing in Commodity Futures
The results from following a simple momentum investing strategy are shown in Table 5. The
strategy we examine is based on the momentum in commodity returns over a range of prior
periods ranging from 6 to 12 months. Portfolios are constructed for quartiles of highest
(winner) and lowest (loser) commodity futures based on their cumulative return over the
range of prior months. Returns are then computed for the month of the construction of the
portfolios. Given the number of commodity futures that we examine, there are 7 returns in
each of the winner and loser portfolios. The panels of summary statistics shown in Table 5
are for long positions in the winner and loser portfolios and long winner – short loser
portfolios.
The long investments in winner portfolios show high and significant positive excess
returns for momentum calculation periods at the short and long ends. This is greatest at the
longer end; 12-month momentum provides an average annualised excess return of 11.12%
which is significantly greater than for the medium length calculation periods. This is in
excess of that achieved by any of the long trend following strategies discussed above but
comes at the price of much higher volatility. The Sharpe ratio of the 12-month momentum
strategy is 0.57 which is clearly lower than that of any of the trend-following strategies which
is maximised at 0.76 for the 7-month trend-following portfolio. The performance of all
momentum strategies are also negatively skewed and show much larger maximum
drawdowns compared to all trend following strategies(in Table 4).Further(and not shown
here) long-only momentum strategies all resulted in average losses over the credit crisis
period. This highlights the point made by Daniel and Moskowitz (2011) and Daniel et al
(2012) that momentum strategy returns are often skewed and are subject to momentum
crashes where momentum portfolio returns fall abruptly following a downturn in the market
9
overall. Part of the motivation for introducing a trend following element to a momentum
strategy in commodity futures is to reduce the skewness in returns and the associated crash
risk.
Novy-Marx (2012) has recently raised the question of the relative performance of
momentum strategies based on different length periods of momentum. His results show
limited returns from shorter length periods of up to 6 months compared with longer periods
between 6 and 12 months. Table 6 shows a comparison of four momentum periods for our
commodity futures data. These show, contrasting with Novy-Marx, that returns and Sharpe
ratios are higher for 12 month momentum returns than for short or medium length periods.
Unlike evidence in Novy-Marx (2012), there is some evidence from column 2 of Table 6 that
averaging over 2-6 months provides for a higher average return and Sharpe ratio than for the
average of 7-12 months. However, these are both dominated by the 12 month period. The
discontinuity in performance raises questions about the applicability of popular behavioural
and rational explanations of the effectiveness of momentum strategies.
4.3 Risk Parity Trend Following and Momentum Portfolios
The portfolio returns shown in Tables 4 and 5 for trend following and momentum portfolios
separately are for the standard equally-weighted cases. Next, we evaluate the contribution
that risk-parity weighting might make to these strategies. Table 7 provides results for the
highest return, 12-month momentum strategy for a range of volatility measurement periods
and is directly comparable to the last column in Table 5.As with the simple raw returns
reported above in Table 2, the impact of risk-parity weighting is to increase the presence of
lower volatility commodities in portfolios. Thus amongst winner portfolios, returns are
slightly less volatile and have a somewhat lower maximum drawdown as well as being less
negatively skewed than in the equally-weighted case. Average returns for winners are higher
for some volatility periods. The performance of loser portfolios is much worse under riskparity weighting although this is not significantly different from zero given the size of the tstatistics. Consequently, average returns and Sharpe ratios for winner-loser portfolios are
much higher in this case. For a 30-day volatility measurement period, average returns are
some 13.16% with a Sharpe ratio of 0.68 compared to,say,10.31% and 0.48 for the longshort equally weighted portfolio in Table 5,(12 month momentum calculation period).
Overall the results of adding the risk parity overlay to momentum investing has limited
10
impact on the results but does lead to some overall improvement,especially with regard to
maximum drawdowns.
What if we overlay trend following on the simple returns and apply risk-parity
weighting?The results are shown in Table 8, where 7- and 12-month moving average-based
strategies are reported,and may be compared with the equally weighted version in Table 4
which has no trend following. These show, as with the results for momentum strategies, that
the biggest impact of risk – parity weighting is on loser portfolios and, consequently, on long
winner – short loser portfolios. Average returns and Sharpe ratios are significantly higher for
long-short portfolios for longer volatility calculation periods with the trend following overlay.
These should also be compared with the risk-parity portfolios in Table 2 which do not adjust
for trend following, where drawdowns are at least 3 times as big and Sharpe ratios are only
half the size of Table 8. These results show that risk-parity weighting can have rather limited
effects relative to equal weighting but that more predictable and substantial effects come
from applying trend following.
Inker (2010) has raised a number of concerns with risk parity weighting in the context
of strategies in equity and bond markets. These are mostly concerned with the use of leverage
to extend the weight given to bonds in portfolios which we do not consider here. The
remaining concern raised by Inker is that the attractiveness of previously low volatility return
assets such as bonds might be overstated as they are subject to significant skewness risk. In
our commodity futures data we do not see any substantial skewness risk with lower volatility
commodities and therefore do not anticipate the increased weight attached to these
commodities in the risk parity portfolio increasing skewness risk at the portfolio level.
Indeed the addition of the trend following component reduces skewness in returns as is noted
above.
4.4 The Performance of Combined Trend Following and Momentum Portfolios
Finally, we examine whether combining the two strategies could provide a set of portfolios
which perform better than either of the two strategies alone. Interest in combined strategies
has arisen in the context of designing strategies in a variety of markets outside of commodity
futures, see Antonacci (2012), for example. Our results shown in Table 9 provide the
summary evidence for a set of combined strategies; those of between 6 and 12-month trend
11
following and 12-month momentum risk-parity portfolios based on a 60-day volatility
calculation. Considering winner portfolios, the average excess returns from these strategies
exceed those from any of the winner strategies examined thus far. Compared with
momentum-only returns in Table 5 with, say a 12 month momentum period, the 7 month
moving average trend following return at 12.90% is over 1.85% higher with a standard error
of 0.27%. As a result of the impact of the lower volatility of trend following strategies, these
higher returns are achieved at lower levels of volatility than in the case of momentum-only
strategies and so have a higher Sharpe ratio than any of the previous strategies. There is no
evidence of any skewness in these returns and they are also subject to lower maximum
drawdown than previous strategies. Loser portfolios provide a consistently small negative and
more volatile set of returns which are also not skewed. Winner-loser portfolios thus provide
the highest set of returns for all trend-following moving average calculation periods and
generate the highest average excess return of 15.94% and a Sharpe ratio of 0.82.(Table
9)These results show that amongst all momentum strategies, the introduction of trend
following leads to reduced variability and a positive impact on skewness. If the risk-parity
results in Table 9 are compared with those from equally weighted portfolios with similar
momentum and moving average parameters in Table 10, it can be seen that risk parity leads
to slightly higher average returns at a lower level of volatility. This is consistent with the
original promoters of risk-parity portfolios and the evaluations of broader asset classes such
as Asness et al (2012), for example. Finally, examining the periods of market turbulence, the
final column of Table 3 shows that both equally weighted and risk parity returns from the
combined 6-month trend following and 12-month momentum strategy provide positive
returns over all of these periods and, in particular, the most recent credit crisis period where
the winner-loser strategy delivered in excess of 3% pa.
In this section we have shown that whilst a momentum strategy can deliver high
returns, this is associated with high negative skewness and maximum drawdown. This is true
of equally and risk parity weighted versions of the strategy and for long-only winners
portfolios and long-short, winners-losers strategies. Trend following in itself provides a more
modest but significantly higher return than passive strategies but higher Sharpe ratios
reflecting reduced volatility. The addition of trend following to a momentum
strategy
reduces the downside risk of the momentum approach without sacrificing returns. The
reduced negative skewness is also reflected in reduced maximum drawdown. Whether the
12
significant enhanced average returns from these strategies is compensation for exposure to
important risk factors is our next concern.
5. Understanding the profitability of strategy returns
5.1 Risk adjusted returns
The properties of returns presented thus far refer to unconditional returns from trend
following and momentum strategies. In this section we examine whether these excess returns
are explained by widely employed risk factors. For clarity, we examine the returns from
particular strategies. These are equally and volatility-weighted versions of trend following
based on a 7-month moving average window, momentum based on a 12-month prior period
and the combination of these two strategies(Tables 9 and 10). In particular we examine
estimates of alphas after regressing the returns from the strategies on two sets of risk factors
which have been shown to explain substantial and significant amounts of the variation of
returns in other markets; the Fama-French four US equity market factors, MKT, SMB, HML
and UMD and, secondly, a wider set of market factors: the excess return from the Goldman
Sachs Commodity Market Index (GSCI), the MSCI world equity market index (MSCI), the
Barclays Aggregate Bond Index (BARBOND) and four hedge fund factors of Fung and
Hsieh (2001): the PTFS Bond (SBD), Currency (SFX), Short-term Interest Rate (SIR) and
Stock Index (STK) lookback straddle returns 5. These are risk factors identified by Asness at
al. (2012) and Menkhoff et al. (2012) as significant in the context of a range of markets
including commodity futures and therefore provide a suitable benchmark against which to
judge the levels of returns for the various strategies shown above.
The results of these estimates are shown in Table 11 where Newey-West t-statistics
are shown in square brackets. Looking across all of the strategy returns and risk factors, there
is little evidence that exposure to these factors is able to account for the returns from the
strategies. Comparison of the estimated alphas from the two risk adjustment regressions with
the raw alpha shows that the alphas remain large and significantly larger than zero. Most of
the coefficients on the risk factors are small and insignificantly different from zero. Amongst
the regressions for the long-only strategies the coefficients on the US equity market excess
5
Data for these risk factors can be found at http://faculty.fuqua.duke.edu/dah7/DataLibrary/TF-FAC.xls
13
return and, perhaps unsurprisingly, the return to the Cahart momentum factor (UMD) are
positive and individually significantly different to zero. The regressions for the Fama-French
factors are jointly significant but explain no more than 8.4% of the variation in returns in any
case. For the wider set of market factors, the Goldman Sachs Commodity Market Index
(GSCI) return has a positive and significant effect as do, marginally, the short-term interest
rate and stock market hedge fund lookback straddle factors. These positive effects imply that
the trend following and momentum strategies we examine are providing a hedge against the
risks that these factors represent. These models explain more of the variation in returns. More
than one third of the variation in the momentum returns is explained by the wider market
factors, even if the alpha remains high. Amongst the long-short strategies, the estimation
results in Table 12 show a lower level of significant exposure to the two sets of risk factors
and a reduced fit. In both cases the estimated alphas are reduced less by the risk adjustment
than in the long-only cases. The Fama-French momentum factor UMD is significantly priced
in all of the first set of regressions, whilst the fit is generally below 10%. In the wider market
factor models, the commodity futures strategies provide a hedge against US equity market
momentum risk. Long-short trend following strategies load onto the world equity market
return at a marginally significant level but the hedge fund factors are all insignificant at usual
levels of significance. The fit in terms of R 2 of these models is around 5%.
The analysis of risk explanations for the trend following and momentum returns that
we have found therefore suggests that whilst risk factors can provide a statistically significant
contribution and explain some of the variation in returns, there remains a significant alpha
which is at least two-thirds of the level of the raw excess returns.
5.2 Transactions costs
Realising the returns to the trend following and momentum strategies analysed in this paper
in practice would require accommodating transactions costs. In this section we assess how the
average returns presented above might be modified by allowing for transactions costs. In
doing this we try to be realistic by allowing for a fixed brokerage commission as well as
applying a bid-ask spread. The sum of these costs is then subtracted from gross returns as a
percentage of average contract value, assuming one round-turn trade every month. Following
Szakmary et al (2010) we set the fixed brokerage fee at $10 per contract and the bid-ask
spread at one tick. Locke and Venkatesh (1997) and discussion with market participants
suggest that this is a representative level for the bid-ask spread in commodity futures
14
markets. 6 In our calculations, for the range of commodities, the fixed cost element amounts to
between 6 and 0.5 basis points, whilst the one tick, bid-ask spread is between 5.2 and 0.7
basis points. Having applied these costs, the differences between gross returns and returns net
of transactions costs for the selected strategy returns evaluated in Section 5.1 can be seen in
Table 13. The differences in average returns are not large at no more than 0.5% and well
within one standard error of the gross returns. The extent to which trading costs have reduced
over time due to improvements in the efficiency of trading technologies would make the net
returns we analyse underestimates of performance in more recent parts of the sample period.
Assessment of time variation in returns should take this into account.
5.3 Time-variation in the returns to investment strategies
The analysis presented thus far focuses on average returns and performance in particular
episodes. The stability over time of momentum and trend following returns is clearly of
interest – especially to those with shorter investment horizons. In Figures 1A-E we present
average excess returns to a number of strategies calculated over rolling windows of 36
months. All of these returns show significant time variation. This is more apparent in the
behaviour of momentum returns (Figure 1B) where the highest returns can be seen in the
2008-9 period having been lowest in the 2004-6 period. Trend following returns show lower
time variation and remain at an enhanced level from 2009 to the end of the sample (Figure
1A). It can be seen from the figures that the addition of trend following to the momentum
strategies dominates the difference in returns (Figure 1D): it matters less whether the
portfolios are equally or risk-weighted (compare Figures 1B and C and D and E). This is of
importance for those investors with shorter investment horizons. 7 As noted above, it can be
expected that the performance of returns net of transactions costs for all strategies could be
enhanced by improvements in trading technologies in the later part of the sample period.
6. Conclusion
6
We apply these averages as the index data examined in this paper does not include actual contracts.
7
The potential limits to arbitrage when strategy returns are time varying is surveyed by Duffie (2010). Time
variation in simple momentum returns from foreign exchange momentum strategies is shown by Menkoff et al
(2011), although they do not examine trend following returns.
15
It is no surprise that momentum and trend following rules are popular with professional and
retail investors alike. They offer enhanced returns over passive strategies and sometimes
higher Sharpe ratios in various markets. In this paper we have shown that this is true for
commodity futures. We have shown significant average excess returns for momentum
strategies but these come at the price of substantial negative skewness and maximum
drawdown. Our results demonstrate momentum crash risk as proposed by Daniel and
Moskowitz (2011). We also show significant average excess returns for a variety of trend
following strategies. These produce somewhat lower returns than momentum rules but with
higher Sharpe ratios and without the large negative skewness. The addition of trend following
to a momentum strategy is shown to provide both high returns and lower drawdowns and
skewness. This is especially true of portfolios where weights are measured by inverse
volatility rather than being equal, thus overcoming the large differences in volatility of
different commodities. This finding adds to the literature which tries to explain momentum
returns. In our results, the contribution to momentum performance of the characteristics
offered in this literature are captured by trend following. We show that the enhanced average
excess return to the strategies examined is not mainly compensation for exposure to wellknown risk factors and remains once account is taken of transactions costs. Whether crash
risk is a good explanation for momentum returns, this seems not to be the case for trendfollowing or the combined momentum and trend following strategies that we examine. In
future work we intend to follow up on this idea.
16
7. References
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Dow-Jones (2012). DJ-UBS CI: The Dow Jones-UBS Commodity Index Handbook, Dow
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Erb, C., and Harvey, C., (2006). "The Tactical and Strategic Value of Commodity Futures",
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Investing, 16, 69-79.
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Management Working Paper.
17
Fung, W. and Hsieh, D., (2001). “The Risk in Hedge Fund Strategies: Theory and Evidence
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Funds.
18
Table 1: Summary Statistics
The data are DJ-UBS commodity excess return indices. These returns are inclusive of spot and roll gains but assume no returns on collateral put up. Data period: 1992-2011
with all observations being monthly data. All data are total returns and are in US dollars .A full description of the construction of the indices can be found in Dow-Jones
(2012).
Max. Monthly
Annualized
Min. Monthly
Maximum
Annualized
Sharpe Ratio
Skew
Commodity
Return
(%)
Volatility (%)
Return (%)
Drawdown (%)
Excess Return
(%)
Aluminium
-0.76
19.00
-0.04
15.81
-16.94
0.11
65.07
Coffee
Copper
Corn
Cotton
Crude Oil
Gold
Heating Oil
Lean Hogs
Live Cattle
Natural Gas
Nickel
Silver
Soybean
Soybean Oil
Sugar
Unleaded Gas
Wheat
Zinc
Cocoa
Lead
Platinum
Tin
Brent Crude
Feeder Cattle
Gas Oil
Orange Juice
Soybean Meal
-2.50
8.75
-7.79
-4.73
5.73
4.19
5.32
-10.92
-1.49
-14.81
5.89
7.91
4.14
0.24
4.28
7.60
-10.05
-0.45
-4.15
6.54
9.75
8.27
10.97
2.42
7.20
-8.32
7.80
39.90
26.27
25.52
27.87
31.30
15.25
30.80
24.91
13.62
49.74
34.88
28.39
23.88
25.44
32.41
33.10
27.75
25.41
30.51
28.61
20.26
22.41
28.91
13.42
29.92
29.52
25.16
-0.06
0.33
-0.31
-0.17
0.18
0.27
0.17
-0.44
-0.11
-0.30
0.17
0.28
0.17
0.01
0.13
0.23
-0.36
-0.02
-0.14
0.23
0.48
0.37
0.38
0.18
0.24
-0.28
0.31
19
53.70
31.35
22.19
24.55
35.16
16.40
33.86
21.60
9.87
50.19
37.66
28.18
20.49
26.46
31.06
38.05
37.74
27.39
34.56
26.26
25.52
22.53
33.95
11.76
29.46
29.17
26.13
-31.19
-36.47
-20.44
-22.64
-31.93
-18.46
-29.01
-25.96
-20.73
-35.08
-27.78
-23.63
-22.08
-25.20
-29.70
-38.94
-25.27
-33.78
-25.01
-27.52
-31.33
-22.13
-33.36
-15.33
-31.01
-22.60
-20.39
90.13
63.95
90.27
93.46
76.09
54.05
71.04
93.67
51.27
98.58
80.48
52.14
51.06
69.27
64.74
71.05
92.63
75.93
85.71
73.04
62.22
54.21
72.00
36.12
72.38
91.82
44.92
1.02
-0.03
0.00
0.36
-0.02
0.25
0.19
-0.08
-0.64
0.47
0.24
0.09
-0.11
0.07
0.14
-0.08
0.53
-0.07
0.63
0.02
-0.76
0.43
-0.15
-0.20
0.01
0.36
0.31
Table 2: Risk Parity Portfolios - Monthly Rebalancing
This table shows the annualised average returns in percentages from portfolios formed from the 28 commodity
futures of the DJ-UBSCI for the period Jan 1992 - Jun 2011. The risk-parity portfolios are formed using inverse
relative volatility weights where relative volatility is calculated using between 10 and 120 days of return data prior to
the portfolio formation date.
Winners
Annualized Excess Return (%)
Equal
Weight
Volatility Period (days)
10
20
30
60
90
120
4.45
4.17
3.82
3.86
3.73
3.73
3.82
[Newey-West t statistic]
[1.36]
[1.39]
[1.27]
[1.27]
[1.23]
[1.23]
[1.25]
Annualized Volatility (%)
12.79
11.28
11.40
11.44
11.43
11.47
11.50
Sharpe Ratio
0.35
0.37
0.33
0.34
0.33
0.32
0.33
Max. Monthly Return (%)
12.76
10.59
10.75
10.75
10.91
10.88
10.85
Min. Monthly Return (%)
-20.59
-18.72
-18.61
-18.31
-18.76
-18.80
-18.95
Maximum Drawdown (%)
48.16
43.86
43.68
43.86
44.88
45.27
45.47
Skew
-0.69
-0.84
-0.78
-0.72
-0.81
-0.83
-0.84
20
Surprise Fed Rate Hike
Tech Bubble
Tech Bust
Easy Credit
Credit Crunch
Table 3: Average Annualized Returns over Periods of Interest
Equal
`Volatility Periods (days)
Weight
10
20
30
60
90
-0.36
-0.36
-0.31
-0.31
-0.33
-0.36
1.27
0.84
0.77
0.80
0.83
0.88
0.32
0.03
0.06
0.08
0.05
0.06
2.07
2.12
2.05
2.04
2.01
2.02
-1.43
-1.04
-1.08
-1.09
-1.20
-1.25
TF&MOM
120
-0.41
0.89
0.08
2.04
-1.24
EW
0.32
2.18
1.03
1.57
1.01
The periods concerned are: Surprise Fed Rate Hike (94/2 - 94/3), Tech Bubble (99/1 - 2000/3), Tech Bust (2000/4 - 2004/3), Easy Credit (2002/8 - 2004/3), Credit Crash (2007/7 - 2009/3)
TF&MOM is the return on the equally weighted and risk parity weighted versions of the 6-month trend following adjustment to the 12-month momentum strategy highlighted in Section 4.4.
21
RP
1.32
2.06
1.53
0.32
3.27
Table 4: Trend Following Portfolios - Monthly Trading Jan 1992 - Jun 2011
Moving Average Period (months)
6
7
8
9
10
11
12
Long-Only
Annualized Excess Return (%)
[Newey-West t Statistic]
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
Skew
5.77
[3.06]
7.93
0.73
9.92
-7.11
14.24
0.34
6.04
[3.20]
7.94
0.76
9.92
-7.06
12.43
0.46
5.86
[3.13]
7.84
0.75
9.37
-7.06
13.57
0.29
5.29
[2.90]
7.80
0.68
9.37
-7.06
15.20
0.27
5.16
[2.87]
7.74
0.67
9.14
-6.91
15.99
0.25
5.16
[2.81]
7.81
0.66
9.80
-6.91
16.73
0.29
5.40
[2.88]
7.79
0.69
9.80
-6.91
16.76
0.31
Long-Short
Annualized Excess Return (%)
[Newey-West t Statistic]
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
Skew
6.35
[2.66]
10.19
0.62
20.59
-9.25
17.35
1.27
6.87
[2.84]
10.29
0.67
20.59
-9.25
17.46
1.28
6.52
[2.77]
10.04
0.65
20.59
-9.25
16.24
1.29
5.38
[2.38]
10.03
0.54
20.59
-9.25
18.80
1.28
5.09
[2.27]
10.12
0.50
20.59
-9.46
20.97
1.11
5.11
[2.39]
10.07
0.51
20.59
-10.33
18.84
1.11
5.60
[2.63]
10.00
0.56
20.59
-10.33
17.98
1.10
22
Table 5: Momentum Portfolios - Monthly Trading Jan 1992 - Jun 2011
Momentum Calculation Period (months)
6
7
8
9
10
11
12
Winners
Annualized Excess Return (%)
[Newey-West t Statistic]
9.95
[2.09]
8.52
[1.92]
5.91
[1.50]
4.93
[1.34]
7.10
[1.77]
10.67
[2.45]
11.12
[2.53]
Annualized Volatility (%)
20.10
19.93
19.87
19.38
19.45
19.25
19.36
Sharpe Ratio
0.50
0.43
0.30
0.25
0.37
0.55
0.57
Max. Monthly Return (%)
17.75
16.61
16.61
16.81
17.47
16.81
16.81
Min. Monthly Return (%)
-25.04
-27.72
-29.45
-26.52
-25.88
-25.88
-28.92
Maximum Drawdown (%)
48.67
50.70
50.63
54.11
52.73
49.80
51.56
Skew
-0.14
-0.29
-0.44
-0.32
-0.26
-0.31
-0.56
Losers
Annualized Excess Return (%)
[Newey-West t Statistic]
0.16
[0.39]
1.13
[0.61]
1.65
[0.73]
0.58
[0.49]
-0.83
[0.17]
-2.49
[0.26]
-1.16
[0.08]
Annualized Volatility (%)
17.87
17.54
17.18
17.91
17.88
17.12
17.42
Sharpe Ratio
0.01
0.06
0.10
0.03
-0.05
-0.15
-0.07
Max. Monthly Return (%)
20.05
22.40
22.42
26.60
28.22
23.56
23.56
Min. Monthly Return (%)
-19.83
-22.75
-21.78
-21.78
-20.64
-21.78
-21.14
Maximum Drawdown (%)
62.29
58.57
54.24
50.98
57.35
69.55
60.68
Skew
0.21
0.42
0.47
0.79
1.03
0.61
0.62
Long Winners-Short Losers
Annualized Excess Return (%)
[Newey-West t Statistic]
7.58
[2.27]
5.46
[1.97]
2.49
[1.13]
2.19
[1.08]
5.57
[1.77]
11.31
[3.10]
10.31
[2.82]
Annualized Volatility (%)
22.24
21.08
20.98
21.67
22.59
21.69
21.53
Sharpe Ratio
0.34
0.26
0.12
0.10
0.25
0.52
0.48
Max. Monthly Return (%)
21.49
20.17
20.40
20.60
19.48
20.60
19.89
Min. Monthly Return (%)
-22.38
-26.50
-25.54
-31.07
-32.56
-26.66
-26.66
Maximum Drawdown (%)
49.49
37.02
48.98
53.63
46.37
32.23
38.76
Skew
-0.07
-0.21
-0.13
-0.48
-0.61
-0.24
-0.27
23
Table 6: 12-Month Momentum Subdivision - Monthly Trading Jan 1992 - Jun
2011
Momentum Calculation Period
(months)
1
2-6
7-12
12
Winners
Annualized Excess Return (%)
8.08
9.24
7.57
11.12
Annualized Volatility (%)
18.53
19.53
18.29
19.36
Sharpe Ratio
0.44
0.47
0.41
0.57
Max. Monthly Return (%)
16.37
16.61
18.20
16.81
Min. Monthly Return (%)
-17.92
-24.55
-26.32
-28.92
Maximum Drawdown (%)
48.88
49.58
63.56
51.56
Skew
-0.13
-0.28
-0.47
-0.56
Losers
Annualized Excess Return (%)
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
Skew
0.93
18.00
0.05
16.26
-17.31
66.47
0.07
1.62
17.80
0.09
22.39
-21.43
62.15
0.36
-3.62
16.90
-0.21
18.28
-16.31
71.33
0.32
-1.16
17.42
-0.07
23.56
-21.14
60.68
0.62
Long Winners-Short Losers
Annualized Excess Return (%)
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
Skew
4.50
22.55
0.20
17.23
-22.08
76.68
-0.28
5.40
21.64
0.25
23.60
-22.39
38.48
-0.04
9.71
19.91
0.49
15.36
-20.26
47.73
-0.11
10.31
21.53
0.48
19.89
-26.66
38.76
-0.27
24
Table 7: Risk Parity 12-Month Momentum Portfolios - Monthly Trading Jan 1992 - Jun 2011
Volatility Period (days)
10
20
30
60
90
120
Winners
Annualized Excess Return (%)
11.23
10.41
11.61
11.05
10.67
10.31
[Newey-West t Statistic]
[2.42] [2.25] [2.54] [2.60] [2.52] [2.46]
Annualized Volatility (%)
18.72
18.93
19.03
18.82
19.02
19.11
Sharpe Ratio
0.60
0.55
0.61
0.59
0.56
0.54
Max. Monthly Return (%)
16.81
16.81
16.81
16.93
16.93
16.93
Min. Monthly Return (%)
-26.40 -25.88 -25.88 -25.88 -25.88 -25.88
Maximum Drawdown (%)
51.56
56.25
51.75
49.22
48.86
48.57
Skew
-0.45
-0.38
-0.36
-0.45
-0.43
-0.44
Losers
Annualized Excess Return (%)
[Newey-West t Statistic]
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
Skew
-2.12
[0.33]
14.24
-0.15
14.75
-16.75
63.65
0.24
-3.32
[0.63]
14.69
-0.23
14.75
-17.99
71.48
0.10
-2.47
[0.39]
14.61
-0.17
14.75
-17.46
65.72
0.12
-2.77
[0.48]
14.53
-0.19
14.75
-17.46
65.11
0.13
-3.33
[0.65]
14.48
-0.23
14.75
-17.46
67.30
0.21
-2.83
[0.52]
14.41
-0.20
14.75
-17.46
64.70
0.20
Long Winners-Short Losers
Annualized Excess Return (%)
[Newey-West t Statistic]
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
Skew
10.31
[3.28]
21.53
0.48
19.89
-26.66
38.76
-0.08
12.87
[3.50]
19.48
0.66
17.71
-15.72
39.55
-0.01
13.16
[3.68]
19.40
0.68
17.65
-15.72
31.72
-0.01
12.91
[3.62]
19.43
0.66
19.89
-15.72
30.30
0.00
13.16
[3.65]
19.74
0.67
19.89
-15.72
28.43
0.02
12.23
[3.57]
19.81
0.62
19.89
-15.21
28.14
0.05
25
Table 8: Risk Parity Trend Following Portfolios - Monthly Trading Jan 1992 - Jun 2011
Volatility Period (days)
10
20
30
60
90
120
180
5.01
[2.97]
5.10
[2.94]
5.22
[2.95]
5.35
[3.03]
5.40
[3.03]
5.51
[3.07]
5.51
[3.05]
Annualized Volatility (%)
7.08
7.16
7.17
7.13
7.20
7.22
7.24
Sharpe Ratio
0.71
0.71
0.73
0.75
0.75
0.76
0.76
Max. Monthly Return (%)
8.62
9.25
9.41
9.73
9.62
9.67
9.76
7-Month Moving Average Signal
Long-Only
Annualized Excess Return (%)
[Newey-West t Statistic]
Min. Monthly Return (%)
-7.30
-6.98
-6.79
-6.73
-6.72
-6.74
-6.75
Maximum Drawdown (%)
13.30
13.06
12.78
12.65
12.69
12.74
12.77
Skew
0.12
0.22
0.33
0.37
0.33
0.35
0.36
5.29
[2.64]
5.84
[2.81]
6.03
[2.85]
6.41
[2.92]
6.52
[2.93]
6.64
[2.94]
6.52
[2.86]
Annualized Volatility (%)
8.91
8.95
8.94
8.96
9.00
9.04
9.10
Sharpe Ratio
0.59
0.65
0.67
0.72
0.72
0.73
0.72
Max. Monthly Return (%)
18.72
18.61
18.31
18.76
18.80
18.95
19.06
Min. Monthly Return (%)
-7.35
-7.14
-6.85
-6.70
-6.78
-6.73
-6.84
Maximum Drawdown (%)
15.31
14.45
14.03
12.23
12.01
12.69
12.96
Skew
1.46
1.43
1.39
1.55
1.51
1.55
1.56
5.05
[2.83]
4.99
[2.75]
5.09
[2.78]
5.18
[2.87]
5.19
[2.86]
5.29
[2.90]
5.26
[2.88]
Annualized Volatility (%)
7.05
7.10
7.13
7.07
7.11
7.14
7.17
Sharpe Ratio
0.72
0.70
0.71
0.73
0.73
0.74
0.73
Max. Monthly Return (%)
8.80
9.42
9.56
9.74
9.62
9.69
9.71
Min. Monthly Return (%)
-7.03
-6.68
-6.68
-6.44
-6.54
-6.53
-6.43
Maximum Drawdown (%)
15.76
15.52
15.54
15.34
15.41
15.50
15.67
Skew
0.24
0.30
0.37
0.39
0.35
0.37
0.38
5.37
[2.77]
5.60
[2.81]
5.77
[2.88]
6.08
[3.03]
6.09
[3.01]
6.20
[3.05]
6.02
[2.98]
Annualized Volatility (%)
8.81
8.85
8.89
8.87
8.89
8.92
8.96
Sharpe Ratio
0.61
0.63
0.65
0.69
0.68
0.69
0.67
Max. Monthly Return (%)
18.72
18.61
18.31
18.76
18.80
18.95
19.06
Min. Monthly Return (%)
-8.09
-8.03
-8.13
-7.96
-7.72
-7.66
-7.73
Maximum Drawdown (%)
15.79
15.84
16.15
14.65
14.69
14.18
14.03
Skew
1.38
1.37
1.27
1.43
1.42
1.46
1.48
Long-Short
Annualized Excess Return (%)
[Newey-West t Statistic]
12-Month Moving Average Signal
Long-Only
Annualized Excess Return (%)
[Newey-West t Statistic]
Long-Short
Annualized Excess Return (%)
[Newey-West t Statistic]
Table 9: Trend Following 60-Day Risk Parity 12-Month Momentum Portfolios - Monthly Jan 1992 - Jun
2011
Moving Average Period (months)
6
7
8
9
10
11
12
Winners
Annualized Excess Return (%)
12.77
12.90
12.87
12.37
12.09
11.79
12.43
[Newey-West t Statistic]
[3.39] [3.49] [3.41] [3.30] [3.26] [3.10] [3.23]
Annualized Volatility (%)
16.17
16.41
16.54
16.64
16.56
16.83
16.91
Sharpe Ratio
0.79
0.79
0.78
0.74
0.73
0.70
0.73
Max. Monthly Return (%)
16.93
16.93
16.93
16.93
16.93
16.93
16.93
Min. Monthly Return (%)
-13.00 -13.00 -13.00 -13.00 -13.00 -14.26 -14.26
Maximum Drawdown (%)
31.43
30.73
30.19
28.95
28.22
32.18
31.79
Skew
0.06
0.14
0.12
0.10
0.07
0.00
0.01
Losers
Annualized Excess Return (%)
[Newey-West t Statistic]
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
Skew
Long Winners-Short Losers
Annualized Excess Return (%)
[Newey-West t Statistic]
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
-3.07
[0.72]
12.93
-0.24
14.75
-17.46
62.18
0.04
-4.02
[1.04]
12.97
-0.31
14.75
-17.46
66.65
0.07
-3.46
[0.80]
13.22
-0.26
14.75
-17.46
66.46
0.07
-3.26
[0.71]
13.50
-0.24
14.75
-17.46
66.79
0.07
-3.07
[0.64]
13.62
-0.23
14.75
-17.46
64.66
0.05
-3.23
[0.69]
13.65
-0.24
14.75
-17.46
64.64
0.05
-3.40
[0.74]
13.78
-0.25
14.75
-17.46
66.52
0.08
14.70
[3.84]
19.33
0.76
19.59
-14.84
31.87
-0.08
15.94
[4.07]
19.53
0.82
19.59
-14.84
32.01
-0.10
15.28
[3.98]
19.33
0.79
19.59
-14.84
31.44
-0.09
14.48
[3.91]
19.54
0.74
19.89
-14.84
31.00
-0.06
13.92
[3.86]
19.56
0.71
19.89
-14.84
30.07
-0.07
13.88
[3.86]
19.53
0.71
19.89
-15.72
30.17
0.00
14.69
[4.04]
19.65
0.75
19.89
-15.72
30.83
-0.02
Skew
27
Table 10: Equally Weighted Trend Following 12-Month Momentum Portfolios - Monthly Trading Jan
1992 - Jun 2011
Moving Average Period (months)
6
7
8
9
10
11
12
Winners
Annualized Excess Return (%)
12.82
12.86
12.98
12.48
12.07
12.29
12.69
[Newey-West t Statistic]
[3.31] [3.42] [3.36] [3.27] [3.18] [3.16]
[3.24]
Annualized Volatility (%)
16.47
16.54
16.69
16.77
16.90
17.23
17.29
Sharpe Ratio
0.78
0.78
0.78
0.74
0.71
0.71
0.73
Max. Monthly Return (%)
16.81
16.81
16.81
16.81
16.81
16.81
16.81
Min. Monthly Return (%)
-14.11 -14.11 -14.11 -14.11 -14.11 -14.16
-14.16
Maximum Drawdown (%)
33.55
32.69
32.77
30.21
30.04
31.64
31.25
Skew
0.19
0.24
0.19
0.15
0.11
0.11
0.11
Losers
Annualized Excess Return (%)
[Newey-West t Statistic]
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
Skew
-1.91
[0.20]
15.58
-0.12
23.56
-21.14
56.91
0.50
-2.95
[0.48]
15.74
-0.19
23.56
-21.14
63.28
0.57
-1.82
[0.14]
16.26
-0.11
23.56
-21.14
60.35
0.81
-1.75
[0.11]
16.44
-0.11
23.56
-21.14
61.98
0.77
-1.30
[0.01]
16.51
-0.08
23.56
-21.14
57.66
0.74
-1.60
[0.07]
16.54
-0.10
23.56
-21.14
59.31
0.74
-1.91
[0.14]
16.66
-0.11
23.56
-21.14
62.94
0.74
Long Winners-Short Losers
Annualized Excess Return (%)
[Newey-West t Statistic]
Annualized Volatility (%)
Sharpe Ratio
Max. Monthly Return (%)
Min. Monthly Return (%)
Maximum Drawdown (%)
Skew
12.57
[3.14]
21.33
0.59
21.14
-26.25
35.76
-0.30
13.76
[3.41]
21.41
0.64
21.14
-26.25
34.72
-0.32
12.50
[3.35]
21.57
0.58
21.14
-26.25
37.29
-0.34
11.89
[3.04]
21.66
0.55
21.14
-26.25
37.85
-0.30
10.96
[2.87]
21.82
0.50
21.14
-26.18
39.45
-0.29
11.53
[3.00]
21.96
0.53
21.14
-25.74
38.10
-0.27
12.24
[3.12]
22.06
0.55
21.14
-25.74
40.35
-0.25
28
Table 11: Risk Adjustment of Returns: Long Only Portfolios
Simple Average - Long Only
TF & MOM RP
TF & MOM EW
Average
1.126
[3.49]
1.125
[3.42]
TF RP
MOMRP
Average
0.463
[3.03]
1.026
[2.60]
Equity Factors - Long Only
TF & MOM RP
TF & MOM EW
TF RP
MOM VW
Alpha
0.877
[2.80]
0.873
[2.83]
0.35
[2.41]
0.649
[1.64]
MKT
0.233
[3.24]
0.218
[3.05]
0.104
[2.61]
0.436
[3.54]
SMB
-0.0036
[0.04]
-0.0018
[0.02]
0.00732
[0.19]
0.0075
[0.08]
HML
0.0823
[0.92]
0.0877
[0.99]
0.0546
[1.44]
0.136
[1.47]
UMD
0.158
[3.01]
0.173
[3.19]
0.0562
[2.01]
0.146
[2.42]
R2
0.0844
Alpha
0.913
[2.93]
0.94
[3.22]
0.395
[2.92]
0.659
[2.11]
GSCI
0.0384
[6.09]
0.0411
[6.31]
0.0158
[5.61]
0.0444
[6.96]
MSCI
0.00581
[1.04]
0.00213
[0.39]
0.00345
[1.17]
0.0167
[3.09]
BARBOND
-0.014
[0.75]
-0.0166
[0.84]
-0.0176
[2.28]
0.0134
[0.44]
SBD
-2.026
[1.28]
-1.481
[0.98]
-0.602
[0.81]
-0.911
[0.39]
SFX
0.603
[0.50]
0.276
[0.24]
0.549
[1.00]
-0.245
[0.18]
0.0797
0.0420
0.0705
Wider Market Factors - Long Only
TF & MOM RP
TF & MOM EW
TF RP
MOM RP
SIR
1.711
[1.83]
1.413
[1.74]
-0.0533
[0.01]
-0.539
[0.40]
STK
2.211
[1.04]
2.156
[1.02]
1.171
[1.55]
0.0656
[0.02]
R2
0.183
0.181
0.192
0.356
The risk factors are; the Fama-French four US equity market factors, MKT, SMB, HML and UMD and, secondly, a wider set of market factors: the excess return
from the Goldman Sachs Commodity Market Index (GSCI), the MSCI world equity market index (MSCI), the Barclays Aggregate Bond Index (BARBOND)
and four hedge fund factors of Fung and Hsieh (2001): the PTFS Bond (SBD), Currency (SFX), Short-term Interest Rate (SIR) and Stock Index (STK) lookback
straddle returns. Portfolios are either equal-weight (EW) or risk-parity weighted (RP) for trend following (TF), momentum (MOM) or a combination of the two
(TF & MOM).
29
Table 12: Risk Adjustment: Long-Short Portfolios
Simple Average - Long-Short
TF & MOM RP
TF & MOM EW
Average
1.398
[4.07]
1.272
[3.41]
TF RP
MOMRP
Average
0.565
[2.92]
1.172
[3.62]
Equity Factors - Long-Short
TF & MOM RP
TF & MOM EW
TF RP
MOM RP
Alpha
1.238
[3.46]
1.11
[2.90]
0.601
[2.65]
0.93
[2.85]
MKT
-0.0064
[0.06]
-0.0948
[0.85]
-0.122
[1.25]
0.142
[1.71]
SMB
-0.0014
[0.02]
0.0512
[0.52]
-0.0307
[1.04]
0.0312
[0.37]
HML
0.042
[0.36]
0.0998
[0.70]
-0.0299
[0.46]
0.0866
[0.77]
UMD
0.263
[3.75]
0.296
[4.20]
0.0847
[3.05]
0.225
[3.05]
Alpha
1.37
[3.08]
1.42
[3.22]
0.648
[2.85]
0.985
[2.48]
GSCI
0.0206
[2.28]
0.0138
[1.13]
0.00241
[0.54]
0.0215
[2.39]
MSCI
-0.0102
[1.27]
-0.0156
[1.80]
-0.0091
[1.86]
-0.001
[0.10]
BARBOND
-0.016
[0.55]
-0.0279
[0.94]
-0.0276
[1.95]
0.014
[0.43]
SBD
-1.036
[0.50]
-2.437
[1.09]
-0.535
[0.52]
0.937
[0.35]
R2
0.0780
0.116
0.0644
0.0576
Wider Market Factors - Long-Short
TF & MOM RP
TF & MOM EW
TF RP
MOM RP
SFX
0.981
[0.48]
0.368
[0.17]
1.046
[0.94]
-0.294
[0.16]
SIR
1.791
[1.09]
1.838
[1.23]
1.13
[0.83]
0.129
[0.08]
STK
2.433
[0.77]
3.799
[1.05]
1.413
[1.14]
-0.498
[0.14]
R2
0.0497
0.0538
0.0415
0.0482
The risk factors are; the Fama-French four US equity market factors, MKT, SMB, HML and UMD and, secondly, a wider set of market factors: the excess return
from the Goldman Sachs Commodity Market Index (GSCI), the MSCI world equity market index (MSCI), the Barclays Aggregate Bond Index (BARBOND)
and four hedge fund factors of Fung and Hsieh (2001): the PTFS Bond (SBD), Currency (SFX), Short-term Interest Rate (SIR) and Stock Index (STK) lookback
straddle returns. Portfolios are either equal-weight (EW) or risk-parity weighted (RP) for trend following (TF), momentum (MOM) or a combination of the two
(TF & MOM).
30
Table 13: Transactions Costs Adjustment
Average Returns - Long Only
Gross
Net
TF & MOM RP
12.90
12.62
[3.49] [3.38]
TF & MOM EW
12.86
12.52
[3.42] [3.37]
Average Returns - Long-Short
Gross
Net
TF & MOM RP
15.94
15.65
[4.07] [3.99]
TF & MOM EW
13.76
13.01
[3.41] [3.38]
TF EW
MOM EW
TF EW
MOM EW
Gross
6.04
[3.20]
11.12
[2.53]
Net
5.91
[2.99]
10.83
[2.48]
Gross
6.87
[2.84]
10.31
[2.82]
Net
6.75
[2.79]
9.75
[2.70]
TF RP
MOM RP
TF RP
MOM RP
Gross
5.35
[3.03]
11.05
[2.60]
Net
5.31
[2.91]
10.76
[2.54]
Gross
6.41
[2.92]
12.91
[3.62]
Net
6.37
[2.86]
12.21
[3.55]
Portfolios are either equal-weight (EW) or risk-parity weighted (RP) for trend following (TF), momentum (MOM) or a
combination of the two (TF & MOM).
31
Figure 1A
Rolling Average 36-month Returns for Five Commodity Strategies
Figure 1B
Figure 1C
Figure 1D
Figure 1E
33
34