Improving Complex Knowledge Base Question Answering with Relation-Aware Subgraph Retrieval and Reasoning Network
Complex Knowledge Base Question Answering aims to answer a complex question over a Knowledge Base. A mainstream solution is based on information retrieval, which usually extracts a pivotal subgraph from entire Knowledge Base to locate candidate answers, and then determines the plausible answers with...
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Published in | 2023 International Joint Conference on Neural Networks (IJCNN) pp. 1 - 8 |
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Main Authors | , , , , |
Format | Conference Proceeding |
Language | English |
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18.06.2023
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Abstract | Complex Knowledge Base Question Answering aims to answer a complex question over a Knowledge Base. A mainstream solution is based on information retrieval, which usually extracts a pivotal subgraph from entire Knowledge Base to locate candidate answers, and then determines the plausible answers with semantic matching between candidate answers and the question. However, such a paradigm can have two critical problems: 1) Complex Knowledge Base Question Answering can be sensitive to the subgraph, since a small subgraph may exclude the answers, while a large one may introduce a lot of noise; 2) directly deriving answers with semantic matching neglects the global topology in the Knowledge Base, which may limit the capability in answer reasoning. To tackle above challenges, we propose the Relation-Aware Subgraph Retrieval and Reasoning Network, where relations are emphasized to construct subgraphs and answer reasoning. Specifically, we present a Relation-Aware Subgraph Retrieval (RASR) method to initialize and prune subgraphs with the guidance of relation semantics. To compre-hensively understand the complex correlations between the question and candidate answers, we put forward a Relation-Aware Reasoning Network (RARN), which contains a text reasoning module focusing on the semantics understanding of the question and a graph reasoning module focusing on mining the topology between the topic entities and the answers. Experiments on two classical benchmark datasets show that our reasoning model outperforms the state-of-the-art results of Information Retrieval models. What's more, data statistical analysis on the subgraphs demonstrates the effectiveness of our proposed subgraph retrieval method. |
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AbstractList | Complex Knowledge Base Question Answering aims to answer a complex question over a Knowledge Base. A mainstream solution is based on information retrieval, which usually extracts a pivotal subgraph from entire Knowledge Base to locate candidate answers, and then determines the plausible answers with semantic matching between candidate answers and the question. However, such a paradigm can have two critical problems: 1) Complex Knowledge Base Question Answering can be sensitive to the subgraph, since a small subgraph may exclude the answers, while a large one may introduce a lot of noise; 2) directly deriving answers with semantic matching neglects the global topology in the Knowledge Base, which may limit the capability in answer reasoning. To tackle above challenges, we propose the Relation-Aware Subgraph Retrieval and Reasoning Network, where relations are emphasized to construct subgraphs and answer reasoning. Specifically, we present a Relation-Aware Subgraph Retrieval (RASR) method to initialize and prune subgraphs with the guidance of relation semantics. To compre-hensively understand the complex correlations between the question and candidate answers, we put forward a Relation-Aware Reasoning Network (RARN), which contains a text reasoning module focusing on the semantics understanding of the question and a graph reasoning module focusing on mining the topology between the topic entities and the answers. Experiments on two classical benchmark datasets show that our reasoning model outperforms the state-of-the-art results of Information Retrieval models. What's more, data statistical analysis on the subgraphs demonstrates the effectiveness of our proposed subgraph retrieval method. |
Author | Luo, Dan Sheng, Jiawei Xu, Hongbo Wang, Lihong Wang, Bin |
Author_xml | – sequence: 1 givenname: Dan surname: Luo fullname: Luo, Dan email: luodan@iie.ac.cn organization: Institute of Information Engineering, Chinese Academy of Sciences,Beijing,China – sequence: 2 givenname: Jiawei surname: Sheng fullname: Sheng, Jiawei email: shengjiawei@iie.ac.cn organization: Institute of Information Engineering, Chinese Academy of Sciences,Beijing,China – sequence: 3 givenname: Hongbo surname: Xu fullname: Xu, Hongbo email: hbxu@iie.ac.cn organization: Institute of Information Engineering, Chinese Academy of Sciences,Beijing,China – sequence: 4 givenname: Lihong surname: Wang fullname: Wang, Lihong email: wlh@isc.org.cn organization: Xiaomi AI Lab,Beijing,China – sequence: 5 givenname: Bin surname: Wang fullname: Wang, Bin email: wangbin11@xiaomi.com organization: National Computer Network Emergency Response Technical Team Coordination Center of China,Beijing,China |
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Snippet | Complex Knowledge Base Question Answering aims to answer a complex question over a Knowledge Base. A mainstream solution is based on information retrieval,... |
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SubjectTerms | Cognition Focusing graph rea-soning Information retrieval knowledge base question answering Knowledge based systems Network topology Semantics Statistical analysis |
Title | Improving Complex Knowledge Base Question Answering with Relation-Aware Subgraph Retrieval and Reasoning Network |
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