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arxiv: 1306.3729 · v1 · submitted 2013-06-17 · 💻 cs.LG · stat.ML

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Spectral Experts for Estimating Mixtures of Linear Regressions

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classification 💻 cs.LG stat.ML
keywords lineardiscriminativeestimatorlatent-variablelocaloptimizationregressionstensor
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Discriminative latent-variable models are typically learned using EM or gradient-based optimization, which suffer from local optima. In this paper, we develop a new computationally efficient and provably consistent estimator for a mixture of linear regressions, a simple instance of a discriminative latent-variable model. Our approach relies on a low-rank linear regression to recover a symmetric tensor, which can be factorized into the parameters using a tensor power method. We prove rates of convergence for our estimator and provide an empirical evaluation illustrating its strengths relative to local optimization (EM).

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