Poster
How Much Restricted Isometry is Needed In Nonconvex Matrix Recovery?
Richard Zhang · Cedric Josz · Somayeh Sojoudi · Javad Lavaei
Room 210 #46
Keywords: [ Non-Convex Optimization ]
[
Abstract
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Abstract:
When the linear measurements of an instance of low-rank matrix recovery
satisfy a restricted isometry property (RIP) --- i.e. they
are approximately norm-preserving --- the problem is known
to contain no spurious local minima, so exact recovery is guaranteed.
In this paper, we show that moderate RIP is not enough to eliminate
spurious local minima, so existing results can only hold for near-perfect
RIP. In fact, counterexamples are ubiquitous: every $x$ is the spurious
local minimum of a rank-1 instance of matrix recovery that satisfies
RIP. One specific counterexample has RIP constant $\delta=1/2$, but
causes randomly initialized stochastic gradient descent (SGD) to fail
12\% of the time. SGD is frequently able to avoid and escape spurious
local minima, but this empirical result shows that it can occasionally
be defeated by their existence. Hence, while exact recovery guarantees
will likely require a proof of no spurious local minima, arguments
based solely on norm preservation will only be applicable to a narrow
set of nearly-isotropic instances.
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