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Review of Deep Learning Techniques for Improving the Performance of Machine Reading Comprehension Problem

机译:改善机器阅读理解能力的深度学习技术综述

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The amazing research of Artificial Intelligence is natural language processing (NLP) and the mesmerizing field in NLP is machine reading comprehension (MRC). MRC alleviates the efforts of making machines behave like a human as it helps information accessing in natural language by developing Question answering systems. MRC is summarized as a task to read a piece of text, understand it, and answer the related question of the text. Reading text can be cloze style reading (fill in the blanks from the text) as well as open style reading (separate question) and understanding the piece of text as well as the query is accomplished by contextual representation and Attention mechanism. In the MRC literature, various methodologies have been used for extracting answers from the given text including primitive methods to the deep learning methods to have a step towards deploying machine intelligence. The introduction of deep learning and large datasets in the recent few years has encouraged the success of MRC. This paper gives a recent review of MRC models based on deep learning, datasets on which they have been evaluated, and also their word representations.
机译:人工智能的惊人研究是自然语言处理(NLP),而NLP中令人着迷的领域是机器阅读理解(MRC)。 MRC通过开发问答系统帮助以自然语言访问信息,从而减轻了使机器表现得像人一样的努力。 MRC被概括为一项阅读,理解和回答文本相关问题的任务。阅读文本可以是完形填空样式(填充文本中的空白),也可以是开放样式读样式(单独的问题),理解文本以及查询是通过上下文表示和Attention机制来完成的。在MRC文献中,已使用各种方法从给定的文本中提取答案,包括从原始方法到深度学习方法的答案,以迈向部署机器智能的一步。近年来,深度学习和大型数据集的引入鼓励了MRC的成功。本文对基于深度学习的MRC模型,已对其进行了评估的数据集以及它们的单词表示形式进行了最新回顾。

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