Lower Bounds for the Convergence of Tensor Power Iteration on Random Overcomplete Models

11/07/2022
by   Yuchen Wu, et al.
0

Tensor decomposition serves as a powerful primitive in statistics and machine learning. In this paper, we focus on using power iteration to decompose an overcomplete random tensor. Past work studying the properties of tensor power iteration either requires a non-trivial data-independent initialization, or is restricted to the undercomplete regime. Moreover, several papers implicitly suggest that logarithmically many iterations (in terms of the input dimension) are sufficient for the power method to recover one of the tensor components. In this paper, we analyze the dynamics of tensor power iteration from random initialization in the overcomplete regime. Surprisingly, we show that polynomially many steps are necessary for convergence of tensor power iteration to any of the true component, which refutes the previous conjecture. On the other hand, our numerical experiments suggest that tensor power iteration successfully recovers tensor components for a broad range of parameters, despite that it takes at least polynomially many steps to converge. To further complement our empirical evidence, we prove that a popular objective function for tensor decomposition is strictly increasing along the power iteration path. Our proof is based on the Gaussian conditioning technique, which has been applied to analyze the approximate message passing (AMP) algorithm. The major ingredient of our argument is a conditioning lemma that allows us to generalize AMP-type analysis to non-proportional limit and polynomially many iterations of the power method.

READ FULL TEXT
research
11/06/2014

Analyzing Tensor Power Method Dynamics in Overcomplete Regime

We present a novel analysis of the dynamics of tensor power iterations i...
research
12/26/2020

Power Iteration for Tensor PCA

In this paper, we study the power iteration algorithm for the spiked ten...
research
10/29/2021

Landscape analysis of an improved power method for tensor decomposition

In this work, we consider the optimization formulation for symmetric ten...
research
05/25/2018

Guaranteed Simultaneous Asymmetric Tensor Decomposition via Orthogonalized Alternating Least Squares

We consider the asymmetric orthogonal tensor decomposition problem, and ...
research
12/23/2021

Selective Multiple Power Iteration: from Tensor PCA to gradient-based exploration of landscapes

We propose Selective Multiple Power Iterations (SMPI), a new algorithm t...
research
02/05/2015

Provable Sparse Tensor Decomposition

We propose a novel sparse tensor decomposition method, namely Tensor Tru...
research
10/28/2016

Homotopy Analysis for Tensor PCA

Developing efficient and guaranteed nonconvex algorithms has been an imp...

Please sign up or login with your details

Forgot password? Click here to reset