A Review of Textual and Voice Processing Algorithms in the Field of Natural Language Processing

Matt Bowden
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Abstract

Currently, there is a significant focus on natural language processing (NLP) within academic circles. As one of the initial domains of inquiry in the domain of machine learning, it has been utilized in a variety of significant sub-disciplines, such as text processing, speech recognition, and machine translation. Natural language processing has contributed to notable progress in computing and artificial intelligence. The recurrent neural network serves as a fundamental component for numerous techniques in domain of NLP. The present article conducts a comprehensive evaluation of various algorithms for processing textual and voice data, accompanied by illustrative instances of their functionality. Various algorithmic outcomes exhibit the advancements achieved in this field during the preceding decade. Our endeavor involved the classification of algorithms based on their respective types and expounding on the scope for future research in this domain. Furthermore, the study elucidates the potential applications of these heterogeneous algorithms and also evaluates the disparities among them through an analysis of the findings. Despite the fact that natural language processing has not yet achieved its ultimate objective of flawlessness, it is plausible that with sufficient exertion, the field will eventually attain it. Currently, a wide variety of artificial intelligence systems use natural language processing algorithms to comprehend human-spoken directions.
自然语言处理领域的文本和语音处理算法综述
目前,自然语言处理(NLP)成为学术界关注的焦点。作为机器学习领域的最初研究领域之一,它已被用于各种重要的子学科,如文本处理、语音识别和机器翻译。自然语言处理对计算机和人工智能的显著进步做出了贡献。递归神经网络是自然语言处理领域众多技术的基础组成部分。本文对处理文本和语音数据的各种算法进行了全面的评估,并附有其功能的说明性实例。各种算法结果展示了在过去十年中在这一领域取得的进展。我们的努力包括基于各自类型的算法分类,并阐述了该领域未来研究的范围。此外,该研究阐明了这些异构算法的潜在应用,并通过对研究结果的分析评估了它们之间的差异。尽管事实上自然语言处理还没有达到其完美无缺的最终目标,但只要付出足够的努力,这个领域最终会达到这个目标,这是合情合理的。目前,各种各样的人工智能系统使用自然语言处理算法来理解人类所说的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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