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LossLens: Diagnostics for Machine Learning through Loss Landscape Visual Analytics

Authors :
Xie, Tiankai
Chen, Jiaqing
Yang, Yaoqing
Geniesse, Caleb
Shi, Ge
Chaudhari, Ajinkya
Cava, John Kevin
Mahoney, Michael W.
Perciano, Talita
Weber, Gunther H.
Maciejewski, Ross
Publication Year :
2024

Abstract

Modern machine learning often relies on optimizing a neural network's parameters using a loss function to learn complex features. Beyond training, examining the loss function with respect to a network's parameters (i.e., as a loss landscape) can reveal insights into the architecture and learning process. While the local structure of the loss landscape surrounding an individual solution can be characterized using a variety of approaches, the global structure of a loss landscape, which includes potentially many local minima corresponding to different solutions, remains far more difficult to conceptualize and visualize. To address this difficulty, we introduce LossLens, a visual analytics framework that explores loss landscapes at multiple scales. LossLens integrates metrics from global and local scales into a comprehensive visual representation, enhancing model diagnostics. We demonstrate LossLens through two case studies: visualizing how residual connections influence a ResNet-20, and visualizing how physical parameters influence a physics-informed neural network (PINN) solving a simple convection problem.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.13321
Document Type :
Working Paper