When:
Thursday, January 9, 2025
4:00 PM - 5:00 PM CT
Where: Lunt Hall, Lunt 104, 2033 Sheridan Road, Evanston, IL 60208 map it
Audience: Faculty/Staff - Student - Public - Post Docs/Docs - Graduate Students
Contact:
Reza Gheissari
Group: Department of Mathematics: Probability Seminar
Category: Lectures & Meetings
Title: Algorithmic threshold for random perceptron models
Abstract: We consider the problem of efficiently optimizing random (spherical or Ising) perceptron models with general bounded Lipschitz activation. We focus on a class of algorithms with Lipschitz dependence on the disorder: this includes gradient descent, Langevin dynamics, approximate message passing, and any constant-order method on dimension-free time-scales. Our main result exactly characterizes the optimal value ALG such algorithms can attain in terms of a one-dimensional stochastic control problem. Qualitatively, ALG is the largest value whose level set contains a certain "dense solution cluster." Quantitatively, this characterization yields both improved algorithms and hardness results for a variety of asymptotic regimes, which are sharp up to absolute constant factors. Joint work (in progress) with Mark Sellke and Nike Sun.