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arxiv: 1712.02747 · v2 · pith:K7TJAW3Cnew · submitted 2017-12-07 · 🧮 math.ST · stat.TH

Dimension-free PAC-Bayesian bounds for matrices, vectors, and linear least squares regression

classification 🧮 math.ST stat.TH
keywords boundsdimension-freeestimationleastlinearmatricespac-bayesianregression
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This paper is focused on dimension-free PAC-Bayesian bounds, under weak polynomial moment assumptions, allowing for heavy tailed sample distributions. It covers the estimation of the mean of a vector or a matrix, with applications to least squares linear regression. Special efforts are devoted to the estimation of Gram matrices, due to their prominent role in high-dimension data analysis.

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