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Learning Structured Latent Factors from Dependent Data:A Generative Model Framework from Information-Theoretic Perspective

Authors :
Zhang, Ruixiang
Koyama, Masanori
Ishiguro, Katsuhiko
Publication Year :
2020

Abstract

Learning controllable and generalizable representation of multivariate data with desired structural properties remains a fundamental problem in machine learning. In this paper, we present a novel framework for learning generative models with various underlying structures in the latent space. We represent the inductive bias in the form of mask variables to model the dependency structure in the graphical model and extend the theory of multivariate information bottleneck to enforce it. Our model provides a principled approach to learn a set of semantically meaningful latent factors that reflect various types of desired structures like capturing correlation or encoding invariance, while also offering the flexibility to automatically estimate the dependency structure from data. We show that our framework unifies many existing generative models and can be applied to a variety of tasks including multi-modal data modeling, algorithmic fairness, and invariant risk minimization.<br />Comment: ICML2020 accepted paper. Author name fixed

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2007.10623
Document Type :
Working Paper