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A probabilistic approach to semantic representation Thomas L. Griffiths & Mark Steyvers {gruffydd,msteyver}@psych.stanford.edu Department of Psychology Stanford University Stanford, CA[removed]USA
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Document Date: 2008-12-18 19:26:21


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