MLLGAug 29, 2018

Online ICA: Understanding Global Dynamics of Nonconvex Optimization via Diffusion Processes

arXiv:1808.09642v120 citations
Originality Incremental advance
AI Analysis

This provides theoretical insights into nonconvex optimization dynamics for researchers in machine learning and statistics, though it is incremental as it builds on existing methods.

The paper tackles the problem of understanding global dynamics in nonconvex optimization by proposing a diffusion process paradigm, applying it to SGD for tensor decomposition in ICA to show convergence through three phases with theoretical proof.

Solving statistical learning problems often involves nonconvex optimization. Despite the empirical success of nonconvex statistical optimization methods, their global dynamics, especially convergence to the desirable local minima, remain less well understood in theory. In this paper, we propose a new analytic paradigm based on diffusion processes to characterize the global dynamics of nonconvex statistical optimization. As a concrete example, we study stochastic gradient descent (SGD) for the tensor decomposition formulation of independent component analysis. In particular, we cast different phases of SGD into diffusion processes, i.e., solutions to stochastic differential equations. Initialized from an unstable equilibrium, the global dynamics of SGD transit over three consecutive phases: (i) an unstable Ornstein-Uhlenbeck process slowly departing from the initialization, (ii) the solution to an ordinary differential equation, which quickly evolves towards the desirable local minimum, and (iii) a stable Ornstein-Uhlenbeck process oscillating around the desirable local minimum. Our proof techniques are based upon Stroock and Varadhan's weak convergence of Markov chains to diffusion processes, which are of independent interest.

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