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Faithful and Efficient Explanations for Neural Networks via Neural Tangent Kernel Surrogate Models

Authors :
Engel, Andrew
Wang, Zhichao
Frank, Natalie S.
Dumitriu, Ioana
Choudhury, Sutanay
Sarwate, Anand
Chiang, Tony
Publication Year :
2023

Abstract

A recent trend in explainable AI research has focused on surrogate modeling, where neural networks are approximated as simpler ML algorithms such as kernel machines. A second trend has been to utilize kernel functions in various explain-by-example or data attribution tasks. In this work, we combine these two trends to analyze approximate empirical neural tangent kernels (eNTK) for data attribution. Approximation is critical for eNTK analysis due to the high computational cost to compute the eNTK. We define new approximate eNTK and perform novel analysis on how well the resulting kernel machine surrogate models correlate with the underlying neural network. We introduce two new random projection variants of approximate eNTK which allow users to tune the time and memory complexity of their calculation. We conclude that kernel machines using approximate neural tangent kernel as the kernel function are effective surrogate models, with the introduced trace NTK the most consistent performer. Open source software allowing users to efficiently calculate kernel functions in the PyTorch framework is available (https://github.com/pnnl/projection\_ntk).<br />Comment: 9 pages, 2 figures, 3 tables Updated 3/11/2024 various additions/clarifications after ICLR review. Accepted as a Spotlight paper at ICLR 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.14585
Document Type :
Working Paper