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arxiv: 1601.04580 · v2 · pith:D54AXEYKnew · submitted 2016-01-18 · 💻 cs.CL · cs.LG

Nonparametric Bayesian Storyline Detection from Microtexts

classification 💻 cs.CL cs.LG
keywords dd-crpbayesiandetectionnovelstorylinestorylinesapproachattention
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News events and social media are composed of evolving storylines, which capture public attention for a limited period of time. Identifying storylines requires integrating temporal and linguistic information, and prior work takes a largely heuristic approach. We present a novel online non-parametric Bayesian framework for storyline detection, using the distance-dependent Chinese Restaurant Process (dd-CRP). To ensure efficient linear-time inference, we employ a fixed-lag Gibbs sampling procedure, which is novel for the dd-CRP. We evaluate on the TREC Twitter Timeline Generation (TTG), obtaining encouraging results: despite using a weak baseline retrieval model, the dd-CRP story clustering method is competitive with the best entries in the 2014 TTG task.

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