首页> 外文会议>International workshop on semantic evaluation;Conference of the North American Chapter of the Association for Computational Linguistics - Human Language Technologies >Inspire at SemEval-2016 Task 2: Interpretable Semantic Textual Similarity Alignment based on Answer Set Programming
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Inspire at SemEval-2016 Task 2: Interpretable Semantic Textual Similarity Alignment based on Answer Set Programming

机译:在SemEval-2016上激发灵感任务2:基于答案集编程的可解释语义文本相似性比对

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In this paper we present our system developed for the SemEval 2016 Task 2 -Interpretable Semantic Textual Similarity along with the results obtained for our submitted runs. Our system participated in the subtasks predicting chunk similarity alignments for gold chunks as well as for predicted chunks. The Inspire system extends the basic ideas from last years participant NeRoSim, however we realize the rules in logic programming and obtain the result with an Answer Set Solver. To prepare the input for the logic program, we use the PunktTokenizer, Word2Vec, and WordNet APIs of NLTK, and the POS-and NER-taggers from Stanford CoreNLP. For chunking we use a joint POS-tagger and dependency parser and based on that determine chunks with an Answer Set Program. Our system ranked third place overall and first place in the Headlines gold chunk subtask.
机译:在本文中,我们介绍为SemEval 2016任务2-可解释的语义文本相似性开发的系统,以及为我们提交的运行获得的结果。我们的系统参与了预测金块以及预测块的块相似性比对的子任务。 Inspire系统扩展了去年参与者NeRoSim的基本思想,但是我们实现了逻辑编程中的规则,并使用Answer Set Solver获得了结果。为了准备逻辑程序的输入,我们使用NLTK的PunktTokenizer,Word2Vec和WordNet API,以及Stanford CoreNLP的POS-和NER-taggers。对于分块,我们使用联合的POS-tagger和依赖项解析器,并基于该确定器使用“答案集程序”确定分块。我们的系统在“头条新闻”金块子任务中总体排名第三和第一。

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