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      Large-scale Semantic Parsing without Question-Answer Pairs

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      Transactions of the Association for Computational Linguistics
      MIT Press - Journals

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          Abstract

          In this paper we introduce a novel semantic parsing approach to query Freebase in natural language without requiring manual annotations or question-answer pairs. Our key insight is to represent natural language via semantic graphs whose topology shares many commonalities with Freebase. Given this representation, we conceptualize semantic parsing as a graph matching problem. Our model converts sentences to semantic graphs using CCG and subsequently grounds them to Freebase guided by denotations as a form of weak supervision. Evaluation experiments on a subset of the Free917 and WebQuestions benchmark datasets show our semantic parser improves over the state of the art.

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          Wide-Coverage Efficient Statistical Parsing with CCG and Log-Linear Models

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            Weakly Supervised Learning of Semantic Parsers for Mapping Instructions to Actions

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              Combined Distributional and Logical Semantics

              We introduce a new approach to semantics which combines the benefits of distributional and formal logical semantics. Distributional models have been successful in modelling the meanings of content words, but logical semantics is necessary to adequately represent many function words. We follow formal semantics in mapping language to logical representations, but differ in that the relational constants used are induced by offline distributional clustering at the level of predicate-argument structure. Our clustering algorithm is highly scalable, allowing us to run on corpora the size of Gigaword. Different senses of a word are disambiguated based on their induced types. We outperform a variety of existing approaches on a wide-coverage question answering task, and demonstrate the ability to make complex multi-sentence inferences involving quantifiers on the FraCaS suite.
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                Author and article information

                Journal
                Transactions of the Association for Computational Linguistics
                Transactions of the Association for Computational Linguistics
                MIT Press - Journals
                2307-387X
                December 2014
                December 2014
                : 2
                : 377-392
                Affiliations
                [1 ]School of Informatics, University of Edinburgh, 10 Crichton Street, Edinburgh EH8 9AB,
                Article
                10.1162/tacl_a_00190
                3d20bf30-e1fe-4086-bbd3-c8fbab399417
                © 2014
                History

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