Mistake Bounds for Binary Matrix Completion
Herbster, Mark, Pasteris, Stephen, Pontil, Massimiliano
–Neural Information Processing Systems
We study the problem of completing a binary matrix in an online learning setting. On each trial we predict a matrix entry and then receive the true entry. We propose a Matrix Exponentiated Gradient algorithm [1] to solve this problem. We provide a mistake bound for the algorithm, which scales with the margin complexity [2, 3] of the underlying matrix. The bound suggests an interpretation where each row of the matrix is a prediction task over a finite set of objects, the columns.
Neural Information Processing Systems
Feb-14-2020, 15:13:22 GMT
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