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Answer Graph-based Interactive Attention Network for Question Answering over Knowledge Base

机译:回答基于图形的交互式注意网络,了解知识库的问题

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摘要

Question answering over knowledge base is one of the promising tasks to access knowledge in knowledge bases. Existing information retrieval based methods mainly map candidate answer into a vector space by aggregating different answer aspects (i.e., entity types, relation paths and context). However, these answer aspects are simply embedded uniformly, while neglecting both question-related and candidate-related answer aspects are dominant to find the optimal answer. To address the above issue, we propose a novel Answer Graph-based Interactive Attention Network, which explicitly constructs an answer graph for each candidate answer. The answer graph consists of most of the possible answer aspects, and we selectively find partial answer aspects that are most relevant to the question using Gated Graph Neural Networks. With the guidance of both question-related and candidate-related answer aspects, the optimal candidate answer can greatly approximate the question, and hence can answer the question more accurately. We conduct extensive experiments on the WebQuestions dataset. Results demonstrate that our approach outperforms the previous state-of-the-art methods.
机译:关于知识库的问题是访问知识库知识的有希望的任务之一。基于信息检索的方法主要通过聚合不同的答案方面(即实体类型,关系路径和上下文)将候选答案映射到向量空间中。但是,这些答案方面只是均匀嵌入,同时忽视与问题相关和候选相关的答案方面是占主导地位的,以找到最佳答案。为解决上述问题,我们提出了一种新颖的基于答案图形的交互式关注网络,该网络为每个候选答案明确构建答案图。答案图包括大多数可能的答案方面,我们选择性地找到与使用门控图神经网络最相关的部分答案方面。随着与问题相关和候选相关的答案方面的指导,最佳候选答案可以大致近似问题,因此可以更准确地回答问题。我们对WebQuestions数据集进行了广泛的实验。结果表明,我们的方法优于以前的最先进的方法。

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