Precise Error Rates for Computationally Efficient Testing

Series
Stochastics Seminar
Time
Thursday, November 20, 2025 - 3:30pm for 1 hour (actually 50 minutes)
Location
Skiles 006
Speaker
Alex Wein – UC Davis – aswein@ucdavis.eduhttp://www.alex-wein.com/
Organizer
Dmitrii Ostrovskii (jointly with Cheng Mao)

We consider one of the most basic high-dimensional testing problems: that of detecting the presence of a rank-1 "spike" in a random Gaussian (GOE) matrix. When the spike has structure such as sparsity, inherent statistical-computational tradeoffs are expected. I will discuss some precise results about the computational complexity, arguing that the so-called "linear spectral statistics" achieve the best possible tradeoff between type I & II errors among all polynomial-time algorithms, even though an exponential-time algorithm can do better. This is based on https://arxiv.org/abs/2311.00289 with Ankur Moitra which uses a version of the low-degree polynomial heuristic, as well as forthcoming work with Ansh Nagda which gives a stronger form of reduction-based hardness.