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arxiv: 1708.06678 · v2 · pith:W2VWJZDKnew · submitted 2017-08-22 · 📊 stat.ML · cs.LG

Learning Combinations of Sigmoids Through Gradient Estimation

classification 📊 stat.ML cs.LG
keywords hiddenregressionsigmoidsapproachcombinationsestimatedfunctiongradient
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We develop a new approach to learn the parameters of regression models with hidden variables. In a nutshell, we estimate the gradient of the regression function at a set of random points, and cluster the estimated gradients. The centers of the clusters are used as estimates for the parameters of hidden units. We justify this approach by studying a toy model, whereby the regression function is a linear combination of sigmoids. We prove that indeed the estimated gradients concentrate around the parameter vectors of the hidden units, and provide non-asymptotic bounds on the number of required samples. To the best of our knowledge, no comparable guarantees have been proven for linear combinations of sigmoids.

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