An extension of XGBoost to probabilistic modelling
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Updated
Jul 14, 2024 - Python
An extension of XGBoost to probabilistic modelling
An extension of LightGBM to probabilistic modelling
An extension of CatBoost to probabilistic modelling
Boosting models for fitting generalized additive models for location, shape and scale (GAMLSS) to potentially high dimensional data. The current relase version can be found on CRAN (https://cran.r-project.org/package=gamboostLSS).
An extension of Py-Boost to probabilistic modelling
A package for online distributional regression.
Toolbox to estimate Generalized Additive Mixed Models and their (Markov-switching) extensions in Python
RefCurv: A Software for the Construction of Pediatric Reference Curves
A general modelling framework for specifying and fitting models to empirical fundamental diagrams of road traffic, and for comparing the model fits using information criteria
Framework for the visualization of distributional regression models
Shiny App: Calculation of Age-dependent Reference Intervals (AdRI)
This repo provides supplemental material for the article titled: "Assessing Potential Heteroscedasticity in Psychological Data: A GAMLSS approach"
Shiny App: Calculation of Age-dependent Reference Intervals with GAMLSS (AdRI_GAMLSS)
This repo contains an R script that algorithmically finds the best distribution that fits several continuous, randomized variables
Este projeto tem como objetivo, através de uma regressão binomial do tipo logito, predizer as chances de um nódulo de mama ser maligno ou benigno. O projeto visa aplicar o aprendizado das aulas do programa de Especialização em Data Science e Big Data da UFPR e compor parte da nota na disciplina de Inferência Estatística parte 3.
GAMLSS code for modeling PFAS DNA methylation relationship.
Forecasting Oil Prices with Time Series & Generalized Additive Models for Location, Scale and Shape
This is a documentation of research done on a Special Olympics data set
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