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Weakly Supervised Domain Detection
Author(s) -
Yumo Xu,
Mirella Lapata
Publication year - 2019
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00287
Subject(s) - computer science , automatic summarization , software portability , artificial intelligence , domain (mathematical analysis) , robustness (evolution) , natural language processing , encoder , task (project management) , machine learning , programming language , mathematical analysis , mathematics , management , economics , biochemistry , chemistry , gene , operating system
In this paper we introduce domain detection as a new natural language processing task. We argue that the ability to detect textual segments that are domain-heavy (i.e., sentences or phrases that are representative of and provide evidence for a given domain) could enhance the robustness and portability of various text classification applications. We propose an encoder-detector framework for domain detection and bootstrap classifiers with multiple instance learning. The model is hierarchically organized and suited to multilabel classification. We demonstrate that despite learning with minimal supervision, our model can be applied to text spans of different granularities, languages, and genres. We also showcase the potential of domain detection for text summarization.

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