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Content-Based Table Retrieval for Web Queries

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arxiv 1706.02427 v1 pith:2PWDHUJF submitted 2017-06-08 cs.CL

Content-Based Table Retrieval for Web Queries

classification cs.CL
keywords tableapproachcontent-basedqueriesqueryretrievaltablestask
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Understanding the connections between unstructured text and semi-structured table is an important yet neglected problem in natural language processing. In this work, we focus on content-based table retrieval. Given a query, the task is to find the most relevant table from a collection of tables. Further progress towards improving this area requires powerful models of semantic matching and richer training and evaluation resources. To remedy this, we present a ranking based approach, and implement both carefully designed features and neural network architectures to measure the relevance between a query and the content of a table. Furthermore, we release an open-domain dataset that includes 21,113 web queries for 273,816 tables. We conduct comprehensive experiments on both real world and synthetic datasets. Results verify the effectiveness of our approach and present the challenges for this task.

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