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Equivariance Discovery by Learned Parameter-Sharing

Authors :
Yeh, Raymond A.
Hu, Yuan-Ting
Hasegawa-Johnson, Mark
Schwing, Alexander G.
Publication Year :
2022

Abstract

Designing equivariance as an inductive bias into deep-nets has been a prominent approach to build effective models, e.g., a convolutional neural network incorporates translation equivariance. However, incorporating these inductive biases requires knowledge about the equivariance properties of the data, which may not be available, e.g., when encountering a new domain. To address this, we study how to discover interpretable equivariances from data. Specifically, we formulate this discovery process as an optimization problem over a model's parameter-sharing schemes. We propose to use the partition distance to empirically quantify the accuracy of the recovered equivariance. Also, we theoretically analyze the method for Gaussian data and provide a bound on the mean squared gap between the studied discovery scheme and the oracle scheme. Empirically, we show that the approach recovers known equivariances, such as permutations and shifts, on sum of numbers and spatially-invariant data.<br />Comment: AISTATS 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2204.03640
Document Type :
Working Paper