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History PCA: A New Algorithm for Streaming PCA

15 February 2018
Puyudi Yang
Cho-Jui Hsieh
Jane-ling Wang
    AI4TS
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Abstract

In this paper we propose a new algorithm for streaming principal component analysis. With limited memory, small devices cannot store all the samples in the high-dimensional regime. Streaming principal component analysis aims to find the kkk-dimensional subspace which can explain the most variation of the ddd-dimensional data points that come into memory sequentially. In order to deal with large ddd and large NNN (number of samples), most streaming PCA algorithms update the current model using only the incoming sample and then dump the information right away to save memory. However the information contained in previously streamed data could be useful. Motivated by this idea, we develop a new streaming PCA algorithm called History PCA that achieves this goal. By using O(Bd)O(Bd)O(Bd) memory with B≈10B\approx 10B≈10 being the block size, our algorithm converges much faster than existing streaming PCA algorithms. By changing the number of inner iterations, the memory usage can be further reduced to O(d)O(d)O(d) while maintaining a comparable convergence speed. We provide theoretical guarantees for the convergence of our algorithm along with the rate of convergence. We also demonstrate on synthetic and real world data sets that our algorithm compares favorably with other state-of-the-art streaming PCA methods in terms of the convergence speed and performance.

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