Literature DB >> 31187095

Accelerated Stochastic Power Iteration.

Christopher De Sa1, Bryan He1, Ioannis Mitliagkas1, Christopher Ré1, Peng Xu2.   

Abstract

Principal component analysis (PCA) is one of the most powerful tools in machine learning. The simplest method for PCA, the power iteration, requires O ( 1 / Δ ) full-data passes to recover the principal component of a matrix with eigen-gap Δ. Lanczos, a significantly more complex method, achieves an accelerated rate of O ( 1 / Δ ) passes. Modern applications, however, motivate methods that only ingest a subset of available data, known as the stochastic setting. In the online stochastic setting, simple algorithms like Oja's iteration achieve the optimal sample complexity O ( σ 2 / Δ 2 ) . Unfortunately, they are fully sequential, and also require O ( σ 2 / Δ 2 ) iterations, far from the O ( 1 / Δ ) rate of Lanczos. We propose a simple variant of the power iteration with an added momentum term, that achieves both the optimal sample and iteration complexity. In the full-pass setting, standard analysis shows that momentum achieves the accelerated rate, O ( 1 / Δ ) . We demonstrate empirically that naively applying momentum to a stochastic method, does not result in acceleration. We perform a novel, tight variance analysis that reveals the "breaking-point variance" beyond which this acceleration does not occur. By combining this insight with modern variance reduction techniques, we construct stochastic PCA algorithms, for the online and offline setting, that achieve an accelerated iteration complexity O ( 1 / Δ ) . Due to the embarassingly parallel nature of our methods, this acceleration translates directly to wall-clock time if deployed in a parallel environment. Our approach is very general, and applies to many non-convex optimization problems that can now be accelerated using the same technique.

Entities:  

Year:  2018        PMID: 31187095      PMCID: PMC6557638     

Source DB:  PubMed          Journal:  Proc Mach Learn Res


  1 in total

1.  A simplified neuron model as a principal component analyzer.

Authors:  E Oja
Journal:  J Math Biol       Date:  1982       Impact factor: 2.259

  1 in total
  1 in total

1.  Distributed Certifiably Correct Pose-Graph Optimization.

Authors:  Yulun Tian; Kasra Khosoussi; David M Rosen; Jonathan P How
Journal:  IEEE Trans Robot       Date:  2021-05-07       Impact factor: 5.567

  1 in total

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