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arxiv:1804.05753

RFCDE: Random Forests for Conditional Density Estimation

Published on Apr 16, 2018
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Abstract

Random forests are extended for conditional density estimation with mixed-type data and multiple responses, enabling uncertainty propagation and joint distribution analysis.

AI-generated summary

Random forests is a common non-parametric regression technique which performs well for mixed-type data and irrelevant covariates, while being robust to monotonic variable transformations. Existing random forest implementations target regression or classification. We introduce the RFCDE package for fitting random forest models optimized for nonparametric conditional density estimation, including joint densities for multiple responses. This enables analysis of conditional probability distributions which is useful for propagating uncertainty and of joint distributions that describe relationships between multiple responses and covariates. RFCDE is released under the MIT open-source license and can be accessed at https://github.com/tpospisi/rfcde . Both R and Python versions, which call a common C++ library, are available.

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