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Unmixing Incoherent Structures of Big Data by Randomized or Greedy Decomposition

Abstract

Learning big data by matrix decomposition always suffers from expensive computation, mixing of complicated structures and noise. In this paper, we study more adaptive models and efficient algorithms that decompose a data matrix as the sum of semantic components with incoherent structures. We firstly introduce "GO decomposition (GoDec)", an alternating projection method estimating the low-rank part LL and the sparse part SS from data matrix X=L+S+GX=L+S+G corrupted by noise GG. Two acceleration strategies are proposed to obtain scalable unmixing algorithm on big data: 1) Bilateral random projection (BRP) is developed to speed up the update of LL in GoDec by a closed-form built from left and right random projections of XSX-S in lower dimensions; 2) Greedy bilateral (GreB) paradigm updates the left and right factors of LL in a mutually adaptive and greedy incremental manner, and achieve significant improvement in both time and sample complexities. Then we proposes three nontrivial variants of GoDec that generalizes GoDec to more general data type and whose fast algorithms can be derived from the two strategies......

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