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Bidirectional Attentive Memory Networks for Question Answering over Knowledge Bases

机译:关于知识库的问题回答的双向周度记忆网络

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摘要

When answering natural language questions over knowledge bases (KBs), different question components and KB aspects play different roles. However, most existing embedding-based methods for knowledge base question answering (KBQA) ignore the subtle interrelationships between the question and the KB (e.g., entity types, relation paths and context). In this work, we propose to directly model the two-way flow of interactions between the questions and the KB via a novel Bidirectional Attentive Memory Network, called BAMnet. Requiring no external resources and only very few hand-crafted features, on the WebQuestions benchmark, our method significantly outperforms existing information-retrieval based methods, and remains competitive with (hand-crafted) semantic parsing based methods. Also, since we use attention mechanisms, our method offers better inter-pretability compared to other baselines.
机译:在通过知识库(KBS)上应答自然语言问题时,不同的问题组件和KB方面发挥了不同的角色。但是,大多数基于嵌入的基于嵌入的知识库问题应答(KBQA)忽略了问题和KB(例如,实体类型,关系路径和上下文之间的微妙相互关系。在这项工作中,我们建议直接通过名为BAMNET的新的双向细心内存网络模型问题和KB之间的双向相互作用。在WebQuestions基准上,我们的方法要求没有外部资源,只有很少的手工制作功能,我们的方法显着优于现有的信息检索方法,并且仍然与(手工制作)语义解析的方法仍然竞争。此外,由于我们使用注意机制,与其他基线相比,我们的方法提供更好的可预存性。

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