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A Deep Neural Network Framework for English Hindi Question Answering

机译:一个深度神经网络框架,用于英语印地语问题

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In this article, we propose a unified deep neural network framework for multilingual question answering (QA). The proposed network deals with the multilingual questions and answers snippets. The input to the network is a pair of factoid question and snippet in the multilingual environment (English and Hindi), and output is the relevant answer from the snippet. We begin by generating the snippet using a graph-based language-independent algorithm, which exploits the lexico-semantic similarity between the sentences. The soft alignment of the question words from the English and Hindi languages has been used to learn the shared representation of the question. The learned shared representation of question and attention-based snippet representation are passed as an input to the answer extraction layer of the network, which extracts the answer span from the snippet. Evaluation on a standard multilingual QA dataset shows the state-of-the-art performance with 39.44 Exact Match (EM) and 44.97 F1 values. Similarly, we achieve the performance of 50.11 Exact Match (EM) and 53.77 F1 values on Translated SQuAD dataset.
机译:在本文中,我们为多语言问题应答(QA)提出了一个统一的深度神经网络框架。拟议的网络处理多语言问题和答案片段。网络的输入是多语言环境(英语和印度)中的一对因子问题和片段,输出是片段的相关答案。我们首先使用基于图形的语言 - 独立的算法生成代码段,该算法利用句子之间的词典语义相似性。来自英语和印地语语言的问题单词的软对齐,已被用于学习问题的共享表示。所学习的共享表示问题和基于关注的片段表示被传递为网络的答案提取层的输入,从而从代答距离中提取答案跨度。标准多语言QA数据集的评估显示了使用39.44精确匹配(EM)和44.97 F1值的最先进的性能。同样,我们在翻译的Squad数据集中达到50.11精确匹配(EM)和53.77 F1值的性能。

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