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Hauptverfasser: Schwienhorst, Benedikt Lütke, Kock, Lucas, Klein, Nadja, Nott, David J.
Format: Preprint
Veröffentlicht: 2023
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2305.06625
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author Schwienhorst, Benedikt Lütke
Kock, Lucas
Klein, Nadja
Nott, David J.
author_facet Schwienhorst, Benedikt Lütke
Kock, Lucas
Klein, Nadja
Nott, David J.
contents Even though dropout is a popular regularization technique, its theoretical properties are not fully understood. In this paper we study dropout regularization in extended generalized linear models based on double exponential families, for which the dispersion parameter can vary with the features. A theoretical analysis shows that dropout regularization prefers rare but important features in both the mean and dispersion, generalizing an earlier result for conventional generalized linear models. To illustrate, we apply dropout to adaptive smoothing with B-splines, where both the mean and dispersion parameters are modeled flexibly. The important B-spline basis functions can be thought of as rare features, and we confirm in experiments that dropout is an effective form of regularization for mean and dispersion parameters that improves on a penalized maximum likelihood approach with an explicit smoothness penalty. An application to traffic detection data from Berlin further illustrates the benefits of our method.
format Preprint
id arxiv_https___arxiv_org_abs_2305_06625
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Dropout Regularization in Extended Generalized Linear Models based on Double Exponential Families
Schwienhorst, Benedikt Lütke
Kock, Lucas
Klein, Nadja
Nott, David J.
Machine Learning
Even though dropout is a popular regularization technique, its theoretical properties are not fully understood. In this paper we study dropout regularization in extended generalized linear models based on double exponential families, for which the dispersion parameter can vary with the features. A theoretical analysis shows that dropout regularization prefers rare but important features in both the mean and dispersion, generalizing an earlier result for conventional generalized linear models. To illustrate, we apply dropout to adaptive smoothing with B-splines, where both the mean and dispersion parameters are modeled flexibly. The important B-spline basis functions can be thought of as rare features, and we confirm in experiments that dropout is an effective form of regularization for mean and dispersion parameters that improves on a penalized maximum likelihood approach with an explicit smoothness penalty. An application to traffic detection data from Berlin further illustrates the benefits of our method.
title Dropout Regularization in Extended Generalized Linear Models based on Double Exponential Families
topic Machine Learning
url https://arxiv.org/abs/2305.06625