AutoBayes: Automated Bayesian Graph Exploration for Nuisance-Robust Inference

Learning data representations that capture task-related features, but are invariant to nuisance variations remains a key challenge in machine learning. We introduce an automated Bayesian inference framework, called AutoBayes, that explores different graphical models linking classifier, encoder, deco...

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Bibliographic Details
Published inarXiv.org
Main Authors Demir, Andac, Koike-Akino, Toshiaki, Wang, Ye, Erdogmus, Deniz
Format Paper
LanguageEnglish
Published Ithaca Cornell University Library, arXiv.org 30.11.2020
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ISSN2331-8422

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Summary:Learning data representations that capture task-related features, but are invariant to nuisance variations remains a key challenge in machine learning. We introduce an automated Bayesian inference framework, called AutoBayes, that explores different graphical models linking classifier, encoder, decoder, estimator and adversarial network blocks to optimize nuisance-invariant machine learning pipelines. AutoBayes also enables learning disentangled representations, where the latent variable is split into multiple pieces to impose various relationships with the nuisance variation and task labels. We benchmark the framework on several public datasets, and provide analysis of its capability for subject-transfer learning with/without variational modeling and adversarial training. We demonstrate a significant performance improvement with ensemble learning across explored graphical models.
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ISSN:2331-8422