2020
DOI: 10.1007/978-981-15-6168-9_18
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Update Frequency and Background Corpus Selection in Dynamic TF-IDF Models for First Story Detection

Abstract: First Story Detection (FSD) requires a system to detect the very first story that mentions an event from a stream of stories. Nearest neighbour-based models, using the traditional term vector document representations like TF-IDF, currently achieve the state of the art in FSD. Because of its online nature, a dynamic term vector model that is incrementally updated during the detection process is usually adopted for FSD instead of a static model. However, very little research has investigated the selection of hyp… Show more

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