Combating the Instability of Mutual Information-based Losses via Regularization
November 16, 2020 ยท Declared Dead ยท ๐ Conference on Uncertainty in Artificial Intelligence
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Authors
Kwanghee Choi, Siyeong Lee
arXiv ID
2011.07932
Category
cs.LG: Machine Learning
Cross-listed
cs.IT,
stat.ML
Citations
6
Venue
Conference on Uncertainty in Artificial Intelligence
Last Checked
3 months ago
Abstract
Notable progress has been made in numerous fields of machine learning based on neural network-driven mutual information (MI) bounds. However, utilizing the conventional MI-based losses is often challenging due to their practical and mathematical limitations. In this work, we first identify the symptoms behind their instability: (1) the neural network not converging even after the loss seemed to converge, and (2) saturating neural network outputs causing the loss to diverge. We mitigate both issues by adding a novel regularization term to the existing losses. We theoretically and experimentally demonstrate that added regularization stabilizes training. Finally, we present a novel benchmark that evaluates MI-based losses on both the MI estimation power and its capability on the downstream tasks, closely following the pre-existing supervised and contrastive learning settings. We evaluate six different MI-based losses and their regularized counterparts on multiple benchmarks to show that our approach is simple yet effective.
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