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JASIS
2010

Linear time series models for term weighting in information retrieval

13 years 9 months ago
Linear time series models for term weighting in information retrieval
Common measures of term importance in information retrieval (IR) rely on counts of term frequency; rare terms receive higher weight in document ranking than common terms receive. However, realistic scenarios yield additional information about terms in a collection. Of interest in this paper is the temporal behavior of terms as a collection changes over time. We propose capturing each term’s collection frequency at discrete time intervals over the lifespan of a corpus and analyzing the resulting time series. We hypothesize the collection frequency of a term x at time t is predictable by a linear model of the term’s prior observations. On the other hand, a linear time series model for a strong discriminators’ collection frequency will yield a poor fit to the data. Operationalizing this hypothesis, we induce three time-based measures of term importance and test these against state-of-the-art term weighting models.
Miles Efron
Added 28 Jan 2011
Updated 28 Jan 2011
Type Journal
Year 2010
Where JASIS
Authors Miles Efron
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