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Oblivious sketching for logistic regression

Abstract

What guarantees are possible for solving logistic regression in one pass over a data stream? To answer this question, we present the first data oblivious sketch for logistic regression. Our sketch can be computed in input sparsity time over a turnstile data stream and reduces the size of a dd-dimensional data set from nn to only poly(μdlogn)\operatorname{poly}(\mu d\log n) weighted points, where μ\mu is a useful parameter which captures the complexity of compressing the data. Solving (weighted) logistic regression on the sketch gives an O(logn)O(\log n)-approximation to the original problem on the full data set. We also show how to obtain an O(1)O(1)-approximation with slight modifications. Our sketches are fast, simple, easy to implement, and our experiments demonstrate their practicality.

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