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      Feature Hashing for Large Scale Multitask Learning

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          Abstract

          Empirical evidence suggests that hashing is an effective strategy for dimensionality reduction and practical nonparametric estimation. In this paper we provide exponential tail bounds for feature hashing and show that the interaction between random subspaces is negligible with high probability. We demonstrate the feasibility of this approach with experimental results for a new use case -- multitask learning with hundreds of thousands of tasks.

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          Database-friendly random projections: Johnson-Lindenstrauss with binary coins

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            Approximate nearest neighbors and the fast Johnson-Lindenstrauss transform

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              Feature hashing for large scale multitask learning

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                Author and article information

                Journal
                12 February 2009
                2010-02-27
                Article
                0902.2206
                6f7d20dd-672d-4fd2-a829-a3bcc6b04c5e

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Fixed broken theorem
                cs.AI

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