Title
Complex Dynamics in Simple Neural Networks: Understanding Gradient Flow in Phase Retrieval
Abstract
Despite the widespread use of gradient-based algorithms for optimizing high-dimensional non-convex functions, understanding their ability of finding good minima instead of being trapped in spurious ones remains to a large extent an open problem. Here we focus on gradient flow dynamics for phase retrieval from random measurements. When the ratio of the number of measurements over the input dimension is small the dynamics remains trapped in spurious minima with large basins of attraction. We find analytically that above a critical ratio those critical points become unstable developing a negative direction toward the signal. By numerical experiments we show that in this regime the gradient flow algorithm is not trapped; it drifts away from the spurious critical points along the unstable direction and succeeds in finding the global minimum. Using tools from statistical physics we characterize this phenomenon, which is related to a BBP-type transition in the Hessian of the spurious minima.
Year
Venue
DocType
2020
NIPS 2020
Conference
Volume
Citations 
PageRank 
33
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Stefano Sarao Mannelli101.69
Giulio Biroli25611.79
Chiara Cammarota3102.89
Florent Krzakala497767.30
Pierfrancesco Urbani512.72
Lenka Zdeborová6119078.62