deepregression: A Flexible Neural Network Framework for Semi-Structured Deep Distributional Regression

David Rügamer*, Chris Kolb, Cornelius Fritz, Florian Pfisterer, Philipp Kopper, Bernd Bischl, Ruolin Shen, Christina Bukas, Lisa Barros de Andrade e Sousa, Dominik Thalmeier, Philipp F.M. Baumann, Lucas Kook, Nadja Klein, Christian L. Müller

*Korrespondierende*r Autor*in für diese Arbeit

Publikation: Wissenschaftliche FachzeitschriftOriginalbeitrag in FachzeitschriftBegutachtung

Abstract

In this paper we describe the implementation of semi-structured deep distributional re-gression, a flexible framework to learn conditional distributions based on the combination of additive regression models and deep networks. Our implementation encompasses (1) a modular neural network building system based on the deep learning library TensorFlow for the fusion of various statistical and deep learning approaches, (2) an orthogonaliza-tion cell to allow for an interpretable combination of different subnetworks, as well as (3) pre-processing steps necessary to set up such models. The software package allows to define models in a user-friendly manner via a formula interface that is inspired by classical statistical model frameworks such as mgcv. The package’s modular design and function-ality provides a unique resource for both scalable estimation of complex statistical models and the combination of approaches from deep learning and statistics. This allows for state-of-the-art predictive performance while simultaneously retaining the indispensable interpretability of classical statistical models.

OriginalspracheEnglisch
FachzeitschriftJournal of Statistical Software
Jahrgang105
Ausgabenummer2
DOIs
PublikationsstatusVeröffentlicht - 2023
Extern publiziertJa

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