Natural Language Processing for Enterprise Applications

B. A
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Abstract

Researchers are concentrating on more efficient communication technologies that can emulate human interactions and comprehend natural languages and human emotions as a result of people's growing reliance on computer-assisted systems. Unstructured data, which is deemed useless, has increased due to the issue of information overload in every industry, including business, healthcare, education, etc. In this context, natural language processing (NLP) is one of the efficient technologies that may be used with more sophisticated technologies, such as machine learning, artificial intelligence, and deep learning, to enhance the interpretation and processing of natural language. In addition to improving human-computer interaction, this can also enable massive amounts of useless and unstructured data to be analyzed and formatted in numerous industrial applications. This will produce significant results that can improve decision-making and hence increase operational effectiveness. This chapter introduces the idea of NLP, its background, and its current state while also going through examples of its use in various industrial fields. Keywords: Natural Language Processing, Artificial Intelligence, Machine Learning.
面向企业应用的自然语言处理
由于人们越来越依赖计算机辅助系统,研究人员正在集中精力研究更有效的通信技术,这些技术可以模拟人类互动,理解自然语言和人类情感。由于每个行业(包括商业、医疗保健、教育等)的信息过载问题,被认为无用的非结构化数据有所增加。在这种背景下,自然语言处理(NLP)是一种有效的技术,可以与更复杂的技术(如机器学习、人工智能和深度学习)一起使用,以增强自然语言的解释和处理。除了改进人机交互之外,这还可以在许多工业应用程序中对大量无用和非结构化数据进行分析和格式化。这将产生重大成果,可以改进决策,从而提高业务效率。本章介绍了NLP的概念,它的背景,它的现状,同时也通过它在各个工业领域的应用实例。关键词:自然语言处理,人工智能,机器学习。
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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