SURF: A Simple, Universal, Robust, Fast Distribution Learning Algorithm

February 22, 2020 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Yi Hao, Ayush Jain, Alon Orlitsky, Vaishakh Ravindrakumar arXiv ID 2002.09589 Category stat.ML: Machine Learning (Stat) Cross-listed cs.IT, cs.LG, math.ST Citations 6 Venue Neural Information Processing Systems Last Checked 4 months ago
Abstract
Sample- and computationally-efficient distribution estimation is a fundamental tenet in statistics and machine learning. We present SURF, an algorithm for approximating distributions by piecewise polynomials. SURF is: simple, replacing prior complex optimization techniques by straight-forward {empirical probability} approximation of each potential polynomial piece {through simple empirical-probability interpolation}, and using plain divide-and-conquer to merge the pieces; universal, as well-known polynomial-approximation results imply that it accurately approximates a large class of common distributions; robust to distribution mis-specification as for any degree $d \le 8$, it estimates any distribution to an $\ell_1$ distance $< 3$ times that of the nearest degree-$d$ piecewise polynomial, improving known factor upper bounds of 3 for single polynomials and 15 for polynomials with arbitrarily many pieces; fast, using optimal sample complexity, running in near sample-linear time, and if given sorted samples it may be parallelized to run in sub-linear time. In experiments, SURF outperforms state-of-the art algorithms.
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