Optimal Average-Case Reductions to Sparse PCA: From Weak Assumptions to Strong Hardness
Matthew Brennan, Guy Bresler

TL;DR
This paper establishes tight computational lower bounds for sparse PCA using reductions from the planted clique conjecture, covering all sparsity levels and linking weaker assumptions to strong hardness results.
Contribution
It provides the first full characterization of the computational barrier in the spiked covariance model for sparse PCA, extending to weaker PC conjecture assumptions.
Findings
Tight lower bounds for sparse PCA at all sparsity levels.
Reduction from planted clique yields optimal computational thresholds.
Weaker PC conjecture assumptions imply subpolynomial hardness for sparse PCA.
Abstract
In the past decade, sparse principal component analysis has emerged as an archetypal problem for illustrating statistical-computational tradeoffs. This trend has largely been driven by a line of research aiming to characterize the average-case complexity of sparse PCA through reductions from the planted clique (PC) conjecture - which conjectures that there is no polynomial-time algorithm to detect a planted clique of size in . All previous reductions to sparse PCA either fail to show tight computational lower bounds matching existing algorithms or show lower bounds for formulations of sparse PCA other than its canonical generative model, the spiked covariance model. Also, these lower bounds all quickly degrade with the exponent in the PC conjecture. Specifically, when only given the PC conjecture up to where ,…
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Taxonomy
TopicsMachine Learning and Algorithms · Complexity and Algorithms in Graphs · Algorithms and Data Compression
Methodspc · Principal Components Analysis
