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The Progess That Natural Language Processing Has Made Towards Human-level AI

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DOI: 10.23977/jaip.2020.030107 | Downloads: 74 | Views: 2285


Dantong Zhang 1, Jingwenqi Wang 2, Meixuan Sun3 3


1 Department of Humanities and Creative Writing, Hong Kong Baptist University, Hong Kong 999077, China
2 Faculty of Business Administration, Nebrija University, Madrid 28015, Spain
3 Faculty of Journalism and Communication, Communication University of China, Beijing 100024, China

Corresponding Author

Dantong Zhang


First of all, in this paper we will briefly introduce the development of Natural Language Processing (NLP) over time and then discuss how this technology benefit our humans, like what initial problems which beat human are being solved by this technology. We also summarise how this technology is being used upon various domains. Last but not least, we predict the future development of NLP by putting forward detailed understanding of the past and present in the context of artificial intelligence.


future of artificial intelligence, natural language processing (NLP)


Dantong Zhang, Jingwenqi Wang and Meixuan Sun, The Progess That Natural Language Processing Has Made Towards Human-level AI. Journal of Artificial Intelligence Practice (2020) Vol. 3: 38-47. DOI:


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