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Fast Algorithms for Segmented Regression

14 July 2016
Jayadev Acharya
Ilias Diakonikolas
Jerry Li
Ludwig Schmidt
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Abstract

We study the fixed design segmented regression problem: Given noisy samples from a piecewise linear function fff, we want to recover fff up to a desired accuracy in mean-squared error. Previous rigorous approaches for this problem rely on dynamic programming (DP) and, while sample efficient, have running time quadratic in the sample size. As our main contribution, we provide new sample near-linear time algorithms for the problem that -- while not being minimax optimal -- achieve a significantly better sample-time tradeoff on large datasets compared to the DP approach. Our experimental evaluation shows that, compared with the DP approach, our algorithms provide a convergence rate that is only off by a factor of 222 to 444, while achieving speedups of three orders of magnitude.

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