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Learning Word Relatedness over Time

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arxiv 1707.08081 v2 pith:7SRBAUQF submitted 2017-07-25 cs.CL

Learning Word Relatedness over Time

classification cs.CL
keywords taskcollectionscorporaexpansionlongitudinalmodelqueryrelationship
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Search systems are often focused on providing relevant results for the "now", assuming both corpora and user needs that focus on the present. However, many corpora today reflect significant longitudinal collections ranging from 20 years of the Web to hundreds of years of digitized newspapers and books. Understanding the temporal intent of the user and retrieving the most relevant historical content has become a significant challenge. Common search features, such as query expansion, leverage the relationship between terms but cannot function well across all times when relationships vary temporally. In this work, we introduce a temporal relationship model that is extracted from longitudinal data collections. The model supports the task of identifying, given two words, when they relate to each other. We present an algorithmic framework for this task and show its application for the task of query expansion, achieving high gain.

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