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Evaluating Architectural Choices for Deep Learning Approaches for Question Answering Over Knowledge Bases

机译:评估关于知识库的问题的深度学习方法的架构选择

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The task of answering natural language questions over knowledge bases has received wide attention in recent years. Various deep learning architectures have been proposed for this task. However, architectural design choices are typically not systematically compared nor evaluated under the same conditions. In this paper, we contribute to a better understanding of the impact of architectural design choices by evaluating four different architectures under the same conditions. We address the task of answering simple questions, consisting in predicting the subject and predicate of a triple given a question. In order to provide a fair comparison of different architectures, we evaluate them under the same strategy for inferring the subject, and compare different architectures for inferring the predicate. The architecture for inferring the subject is based on a standard LSTM model trained to recognize the span of the subject in the question and on a linking component that links the subject span to an entity in the knowledge base. The architectures for predicate inference are based on i) a standard softmax classifier ranging over all predicates as output, ii) a model that predicts a low-dimensional encoding of the property and subject entity, iii) a model that learns to score a pair of subject and predicate given the question as well as iv) a model based on the well-known FastText model. The comparison of architectures shows that FastText provides better results than other architectures.
机译:回答知识库的自然语言问题的任务近年来受到广泛的关注。为此任务提出了各种深度学习架构。然而,通常在相同条件下系统地进行体系结构选择也不进行评估。在本文中,我们通过在相同条件下评估四种不同的架构来更好地了解建筑设计选择的影响。我们解决了回答简单问题的任务,包括预测一个提出问题的三重主题和谓词。为了提供不同架构的公平比较,我们在相同的策略下评估它们来推断对象,并比较不同的架构来推断谓词。用于推断主题的架构基于培训的标准LSTM模型,以识别问题中的主题的跨度以及链接组件,该链接组件将主题跨度链接到知识库中的实体。谓词推断的架构基于i)一个标准的softmax分类器,范围为输出,ii)一个模型,其预测属性和主题实体的低维编码,iii)一个学习才能获得一对的模型主题和谓词给出了问题以及IV的问题,基于众所周知的FastText模型。架构的比较显示FastText提供比其他架构更好的结果。

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