Tensor Programs IVb: Adaptive Optimization in the Infinite-Width Limit
Abstract
Going beyond stochastic gradient descent (SGD), what new phenomena emerge in wide neural networks trained by adaptive optimizers like Adam? Here we show: The same dichotomy between feature learning and kernel behaviors (as in SGD) holds for general optimizers as well, including Adam -- albeit with a nonlinear notion of "kernel." We derive the corresponding "neural tangent" and "maximal update" limits for any architecture. Two foundational advances underlie the above results: 1) A new Tensor Program language, NEXORT, that can express how adaptive optimizers process gradients into updates. 2) The introduction of bra-ket notation to drastically simplify expressions and calculations in Tensor Programs. This work summarizes and generalizes all previous results in the Tensor Programs series of papers.
Keywords
Cite
@article{arxiv.2308.01814,
title = {Tensor Programs IVb: Adaptive Optimization in the Infinite-Width Limit},
author = {Greg Yang and Etai Littwin},
journal= {arXiv preprint arXiv:2308.01814},
year = {2023}
}
Comments
This is the complete version of "Adaptive Optimization in the Infinite-Width Limit" in ICLR 2023, https://openreview.net/forum?id=zgVDqw9ZUES