Max affine Regression with Universal Parameter Estimation for Small ball Designs

IEEE International Symposium on Information Theory (ISIT), 2020(2020)

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摘要
We study the max-affine regression model, where the unknown regression function is modeled as a maximum of a fixed number of affine functions. In recent work [1], we showed that end-to-end parameter estimates were obtainable using this model with an alternating minimization (AM) algorithm provided the covariates (or designs) were normally distributed, and chosen independently of the underlying parameters. In this paper, we show that AM is significantly more robust than the setting of [1]: It converges locally under small-ball design assumptions (which is a much broader class, including bounded log-concave distributions), and even when the underlying parameters are chosen with knowledge of the realized covariates. Once again, the final rate obtained by the procedure is near-parametric and minimax optimal (up to a polylogarithmic factor) as a function of the dimension, sample size, and noise variance. As …
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关键词
log-concave distributions,realized covariates,design distribution,universal parameter estimation,small-ball designs,max-affine regression model,unknown regression function,affine functions,end-to-end parameter estimates,alternating minimization algorithm,small-ball design assumptions
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