mixdistreg: An R Package for Fitting Mixture of Experts Distributional Regression with Adaptive First-order Methods

02/04/2023
by   David Rügamer, et al.
0

This paper presents a high-level description of the R software package mixdistreg to fit mixture of experts distributional regression models. The proposed framework is implemented in R using the deepregression software template, which is based on TensorFlow and follows the neural structured additive learning principle. The software comprises various approaches as special cases, including mixture density networks and mixture regression approaches. Various code examples are given to demonstrate the package's functionality.

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