On Coresets for Logistic Regression

Alexander Munteanu, Chris Schwiegelshohn, Christian Sohler, David Woodruff

Neural Information Processing Systems 

Coresets are one of the central methods to facilitate the analysis of large data. We continue a recent line of research applying the theory of coresets to logistic regression. First, we show the negative result that no strongly sublinear sized coresets exist for logistic regression. To deal with intractable worst-case instances we introduce a complexity measure µ(X), which quantifies the hardness of compressing a data set for logistic regression.

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