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Provable Multi-instance Deep AUC Maximization with Stochastic Pooling

Authors :
Zhu, Dixian
Wang, Bokun
Chen, Zhi
Wang, Yaxing
Sonka, Milan
Wu, Xiaodong
Yang, Tianbao
Publication Year :
2023

Abstract

This paper considers a novel application of deep AUC maximization (DAM) for multi-instance learning (MIL), in which a single class label is assigned to a bag of instances (e.g., multiple 2D slices of a CT scan for a patient). We address a neglected yet non-negligible computational challenge of MIL in the context of DAM, i.e., bag size is too large to be loaded into {GPU} memory for backpropagation, which is required by the standard pooling methods of MIL. To tackle this challenge, we propose variance-reduced stochastic pooling methods in the spirit of stochastic optimization by formulating the loss function over the pooled prediction as a multi-level compositional function. By synthesizing techniques from stochastic compositional optimization and non-convex min-max optimization, we propose a unified and provable muli-instance DAM (MIDAM) algorithm with stochastic smoothed-max pooling or stochastic attention-based pooling, which only samples a few instances for each bag to compute a stochastic gradient estimator and to update the model parameter. We establish a similar convergence rate of the proposed MIDAM algorithm as the state-of-the-art DAM algorithms. Our extensive experiments on conventional MIL datasets and medical datasets demonstrate the superiority of our MIDAM algorithm.<br />To appear in ICML2023, 23 pages

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....0e494cdf77c308f3404591834b85185b