Litcius/Paper detail

Model-based random forests for ordinal regression

Muriel Buri, Torsten Hothorn

2020The International Journal of Biostatistics21 citationsDOI

Abstract

We study and compare several variants of random forests tailored to prognostic models for ordinal outcomes. Models of the conditional odds function are employed to understand the various random forest flavours. Existing random forest variants for ordinal outcomes, such as Ordinal Forests and Conditional Inference Forests, are evaluated in the presence of a non-proportional odds impact of prognostic variables. We propose two novel random forest variants in the model-based transformation forest family, only one of which explicitly assumes proportional odds. These two novel transformation forests differ in the specification of the split procedures for the underlying ordinal trees. One of these split criteria is able to detect changes in non-proportional odds situations and the other one focuses on finding proportional-odds signals. We empirically evaluate the performance of the existing and proposed methods using a simulation study and illustrate the practical aspects of the procedures by a re-analysis of the respiratory sub-item in functional rating scales of patients suffering from Amyotrophic Lateral Sclerosis (ALS).

Topics & Concepts

Ordinal regressionStatisticsMathematicsOrdinal dataRandom forestOrdinal optimizationEconometricsRegression analysisRegressionComputer scienceArtificial intelligenceGaussian Processes and Bayesian InferenceNeural Networks and ApplicationsStatistical Methods and Inference