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arxiv: 1711.07684 · v2 · pith:AUTTZMDLnew · submitted 2017-11-21 · 💻 cs.LG

A two-dimensional decomposition approach for matrix completion through gossip

classification 💻 cs.LG
keywords matrixoriginalapproachblockscompletiondecomposefactorsmatrices
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Factoring a matrix into two low rank matrices is at the heart of many problems. The problem of matrix completion especially uses it to decompose a sparse matrix into two non sparse, low rank matrices which can then be used to predict unknown entries of the original matrix. We present a scalable and decentralized approach in which instead of learning two factors for the original input matrix, we decompose the original matrix into a grid blocks, each of whose factors can be individually learned just by communicating (gossiping) with neighboring blocks. This eliminates any need for a central server. We show that our algorithm performs well on both synthetic and real datasets.

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