自然语言处理中深度学习的最新趋势及其在亚洲语言中的应用

Diganta Baishya, Rupam Baruah
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引用次数: 1

摘要

自然语言处理(NLP)研究允许机器使用人类语言进行对话的技术和程序。人工智能和通信技术的最新进展大大增强了自然语言处理的应用。由于深度学习的进步,人工智能的几乎每个方面,包括自然语言处理,都取得了实质性的进展。深度学习方法使用多层神经元来构建神经网络。递归神经网络及其变体,如长短期(LSTM),双向LSTM,是一些最流行的深度学习技术。这篇文章回顾了过去几年在NLP特定方法中使用的深度学习技术。我们还研究了研究人员在尝试将深度学习应用于亚洲语言时面临的问题。我们还重点介绍了最近针对印度和其他亚洲语言进行的一些关键的深度学习研究工作。此外,我们还讨论了基本的语言处理挑战,并提出了该主题的未来范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent Trends in Deep Learning for Natural Language Processing and Scope for Asian Languages
Natural language processing (NLP) studies the techniques and procedures that allow a machine to converse using human language. Recent advances in artificial intelligence and communication technology have considerably enhanced natural language processing applications. Due to improvements in deep learning, virtually every aspect of artificial intelligence, including natural language processing, has made substantial progress. Deep learning methods use many layers of neurons to construct a neural network. Recurrent Neural Networks and their variants like long short term (LSTM), bidirectional LSTM, are some of the most popular deep learning techniques. This article reviews deep learning techniques employed in NLP- specific approaches in the last few years. We also studied the issues faced by researchers while trying to apply deep learning to Asian languages. We also highlight some critical deep learning research work carried out recently for Indian and other Asian languages. In addition, we discuss fundamental linguistic processing challenges and suggest future scopes for the topic.
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