TL;DR
This paper investigates the computational complexity of sparse tensor PCA, proposing algorithms that interpolate between polynomial and exponential time, and providing theoretical lower bounds that reveal fundamental trade-offs among problem parameters.
Contribution
It introduces a family of algorithms for sparse tensor PCA that achieve near-optimal guarantees across different regimes and extends analysis to multiple signals, with rigorous evidence of computational limits.
Findings
Algorithms recover sparse vectors at specific SNR thresholds.
Extended guarantees for multiple signals with disjoint supports.
Lower bounds match known limits for sparse and tensor PCA.
Abstract
We study the problem of sparse tensor principal component analysis: given a tensor with having i.i.d. Gaussian entries, the goal is to recover the -sparse unit vector . The model captures both sparse PCA (in its Wigner form) and tensor PCA. For the highly sparse regime of , we present a family of algorithms that smoothly interpolates between a simple polynomial-time algorithm and the exponential-time exhaustive search algorithm. For any , our algorithms recovers the sparse vector for signal-to-noise ratio in time , capturing the state-of-the-art guarantees for the matrix settings (in both the polynomial-time and sub-exponential time regimes). Our results…
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Taxonomy
MethodsPrincipal Components Analysis
