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EviNets: Neural Networks for Combining Evidence Signals for Factoid Question Answering

机译:EviNets:神经网络,用于组合证据信号以进行Factoid问题解答

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A critical task for question answering is the final answer selection stage, which has to combine multiple signals available about each answer candidate. This paper proposes EviNets: a novel neural network architecture for factoid question answering. EviNets scores candidate answer entities by combining the available supporting evidence, e.g., structured knowledge bases and unstructured text documents. EviNets represents each piece of evidence with a dense embeddings vector, scores their relevance to the question, and aggregates the support for each candidate to predict their final scores. Each of the components is generic and allows plugging in a variety of models for semantic similarity scoring and information aggregation. We demonstrate the effectiveness of EviNets in experiments on the existing TREC QA and WikiMovies benchmarks, and on the new Yahoo! Answers dataset introduced in this paper. EviNets can be extended to other information types and could facilitate future work on combining evidence signals for joint reasoning in question answering.
机译:问题解答的关键任务是最终的答案选择阶段,该阶段必须组合有关每个候选答案的多个可用信号。本文提出了EviNets:一种用于事实问题回答的新型神经网络体系结构。 EviNets通过结合可用的支持证据(例如结构化知识库和非结构化文本文档)对候选答案实体进行评分。 EviNets用密集的嵌入向量表示每个证据,对它们与问题的相关性进行评分,并汇总对每个候选人的支持以预测其最终分数。每个组件都是通用的,并允许插入各种模型来进行语义相似性评分和信息聚合。我们在现有TREC QA和WikiMovies基准以及新的Yahoo!基准上的实验中证明了EviNets的有效性。本文介绍的答案数据集。 EviNets可以扩展到其他信息类型,并且可以促进将来在结合证据信号以进行问答中的联合推理方面的工作。

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