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Solving a Mixture of Many Random Linear Equations by Tensor Decomposition and Alternating Minimization

19 August 2016
Xinyang Yi
C. Caramanis
Sujay Sanghavi
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Abstract

We consider the problem of solving mixed random linear equations with kkk components. This is the noiseless setting of mixed linear regression. The goal is to estimate multiple linear models from mixed samples in the case where the labels (which sample corresponds to which model) are not observed. We give a tractable algorithm for the mixed linear equation problem, and show that under some technical conditions, our algorithm is guaranteed to solve the problem exactly with sample complexity linear in the dimension, and polynomial in kkk, the number of components. Previous approaches have required either exponential dependence on kkk, or super-linear dependence on the dimension. The proposed algorithm is a combination of tensor decomposition and alternating minimization. Our analysis involves proving that the initialization provided by the tensor method allows alternating minimization, which is equivalent to EM in our setting, to converge to the global optimum at a linear rate.

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