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Knowledge Base Question Answering Method Incorporating Fact Text |
WANG Guangxiang1,2, HE Shizhu1,2, LIU Kang1,2, YU Zhengtao1,2, GAO Shengxiang1,2, GUO Junjun1,2 |
1. Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Kunming 650504 2. Yunnan Key Laboratory of Artificial Intelligence, Kunming Uni-versity of Science and Technology, Kunming 650500 3. National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences, Beijing 100190 |
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Abstract In natural language problems, the relationship expression in the knowledge base is diversified. Therefore, matching the answers of the knowledge base question and answer through representation learning is still a challenge. To make up the shortcomings, a knowledge base question answering method incorporating fact text is proposed. Entities, entity types and relationships in the knowledge base are converted into fact text. A pre-trained language model(BERT) is employed for representation. The vector of question and answers in low dimensional semantic space is obtained using the rich semantic mode of BERT. The answer with the closest semantic similarity to the question is matched by calculation. Experiments show that the proposed method is effective and robust in answering common simple questions.
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Received: 27 January 2021
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Fund:National Key Research and Development Program of China(No.2018YFC0830101,2018YFC0830105,2018YFC0830100), National Natural Science Foundation of China(No.61533018,61972186,61762056,61472168,61702512), Yunnan High-tech Industry Development Project(No.201606) |
Corresponding Authors:
YU Zhengtao, Ph.D., professor. His research interests include natural language processing, information retrieval and machine translation.
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About author:: WANG Guangxiang, master student. His research interests include natural language pro-cessing.HE Shizhu, Ph.D., associate professor. His research interests include knowledge graph and natural language processing.LIU Kang, Ph.D., professor. His research interests include knowledge graph and natural language processing.GAO Shengxiang, Ph.D., associate professor. Her research interests include natural language processing.GUO Junjun, Ph.D., associate professor. His research interests include natural language processing. |
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