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Topics Over Time: A Nonmarkov Continuoustime Model Of Topical Trends, Xuerui Wang, Andrew Mccallum
Topics Over Time: A Nonmarkov Continuoustime Model Of Topical Trends, Xuerui Wang, Andrew Mccallum
Andrew McCallum
This paper presents an LDA-style topic model that captures not only the low-dimensional structure of data, but also how the structure changes over time. Unlike other recent work that relies on Markov assumptions or discretization of time, here each topic is associated with a continuous distribution over timestamps, and for each generated document, the mixture distribution over topics is influenced by both word co-occurrences and the document's timestamp. Thus, the meaning of a particular topic can be relied upon as constant, but the topics' occurrence and correlations change significantly over time. We present results on nine months of personal email, …