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arxiv: 1708.03257 · v1 · pith:2R4F6NOAnew · submitted 2017-08-10 · 💻 cs.DS · cs.LG

Robust polynomial regression up to the information theoretic limit

classification 💻 cs.DS cs.LG
keywords polynomialalgorithmapproximationproblemregressionrobustsamplesadversarial
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We consider the problem of robust polynomial regression, where one receives samples $(x_i, y_i)$ that are usually within $\sigma$ of a polynomial $y = p(x)$, but have a $\rho$ chance of being arbitrary adversarial outliers. Previously, it was known how to efficiently estimate $p$ only when $\rho < \frac{1}{\log d}$. We give an algorithm that works for the entire feasible range of $\rho < 1/2$, while simultaneously improving other parameters of the problem. We complement our algorithm, which gives a factor 2 approximation, with impossibility results that show, for example, that a $1.09$ approximation is impossible even with infinitely many samples.

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