2016
DOI: 10.48550/arxiv.1601.00549
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A Novel Family of Boosted Online Regression Algorithms with Strong Theoretical Bounds

Dariush Kari,
Farhan Khan,
Selami Ciftci
et al.

Abstract: We investigate boosted online regression and propose a novel family of regression algorithms with strong theoretical bounds. In addition, we implement several variants of the proposed generic algorithm. We specifically provide theoretical bounds for the performance of our proposed algorithms that hold in a strong mathematical sense. We achieve guaranteed performance improvement over the conventional online regression methods without any statistical assumptions on the desired data or feature vectors. We demonst… Show more

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