2016
DOI: 10.1007/s11760-016-0972-8
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Highly efficient nonlinear regression for big data with lexicographical splitting

Abstract: This paper considers the problem of online piecewise linear regression for big data applications. We introduce an algorithm, which sequentially achieves the performance of the best piecewise linear (affine) model with optimal partition of the space of the regressor vectors in an individual sequence manner. To this end, our algorithm constructs a class of 2 D sequential piecewise linear models over a set of partitions of the regressor space and efficiently combines them in the mixture-of-experts setting. We sho… Show more

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