Quantifying and Optimizing Simplicity via Polynomial Representations 事件

PRODUCT_LAUNCH2026-05-29影响: MEDIUM

Quantifying and Optimizing Simplicity via Polynomial Representations arXiv:2605.29823v1 Announce Type: new Abstract: Deep networks often exhibit a preference for "simple" solutions, and such a simplicity bias is widely believed to play a key role in generalization. Yet a broadly applicable, quantitative measure of simplicity remains elusive. We introduce polynomial representations as a distribution-aware, low-dimensional surrogate for neural functions: we approximate a network's predictive beha

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