7 research outputs found

    ICT-DCU question answering task at NTCIR-6

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    This paper describes details of our participation in the NTCIR-6 Chinese-to-Chinese Question Answering task. We use the ā€œretrieval plus extraction approachā€ to get answers for questions. We first split the documents into short passages, and then retrieve potentially relevant passages for a question, and finally extract named entity answers from the most relevant passages. For question type identification, we use simple heuristic rules which cover most questions. The Lemur toolkit was used with the okapi model for document retrieval. Results of our task submission are given and some preliminary conclusions drawn

    LCC-DCU C-C question answering task at NTCIR-5

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    This paper describes the work for our participation in the NTCIR-5 Chinese to Chinese Question Answering task. Our strategy is based on the ā€œRetrieval plus Extractionā€ approach. We first retrieve relevant documents, then retrieve short passages from the above documents, and finally extract named entity answers from the most relevant passages. For question type identification, we use simple heuristic rules which can cover most questions. The Lemur toolkit with the OKAPI model is used for document retrieval. Results of our task submission are given and some preliminary conclusions drawn

    Question Answering Approach Using a WordNet-based Answer Type Taxonomy

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    Enhancing factoid question answering using frame semantic-based approaches

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    FrameNet is used to enhance the performance of semantic QA systems. FrameNet is a linguistic resource that encapsulates Frame Semantics and provides scenario-based generalizations over lexical items that share similar semantic backgrounds.Doctor of Philosoph
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