Regularized Optimal Transport Layers for Generalized Global Pooling Operations
Hongteng Xu, Minjie Cheng

TL;DR
This paper introduces a novel framework for global pooling in machine learning based on regularized optimal transport, providing a mathematically grounded, flexible, and learnable pooling operation that improves performance across various tasks.
Contribution
It develops a generalized, interpretable global pooling framework using optimal transport, unifies existing methods, and introduces learnable ROTP layers as a new deep implicit layer.
Findings
ROTP layers can imitate existing pooling methods
ROTP layers improve performance in set and graph tasks
The framework simplifies pooling design and selection
Abstract
Global pooling is one of the most significant operations in many machine learning models and tasks, which works for information fusion and structured data (like sets and graphs) representation. However, without solid mathematical fundamentals, its practical implementations often depend on empirical mechanisms and thus lead to sub-optimal, even unsatisfactory performance. In this work, we develop a novel and generalized global pooling framework through the lens of optimal transport. The proposed framework is interpretable from the perspective of expectation-maximization. Essentially, it aims at learning an optimal transport across sample indices and feature dimensions, making the corresponding pooling operation maximize the conditional expectation of input data. We demonstrate that most existing pooling methods are equivalent to solving a regularized optimal transport (ROT) problem with…
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Taxonomy
TopicsAdvanced Neural Network Applications · Machine Learning and Data Classification · Advanced Graph Neural Networks
MethodsTest
