Peng Cheng Laboratory, Shenzhen 518000, China
Abstract: | [Objective] With the release and application of ChatGPT, large model training technologies have started a new round of research boom, and this time is called the closest to AI AI. Through a comprehensive analysis of the current situation of the large model research based on NLP, the researchers can have a comprehensive understanding of the current research in this field in China. [Methods] Through the use of bibliometric and content analysis, analyzes the external characteristics and content of journal papers, through the annual post, journal cited, the core authors, core institutions, research keywords, research dimensions, China big model research has a more comprehensive cognition, but also summarizes some of the characteristics of the research in the field of China, also for the following research direction.[Results] China's research on large models has penetrated into many fields of society and is currently in the stage of vigorous development. [Conclusion] At present, the research in this field in China is in the second stage of the growth of scientific literature. With the continuous improvement of the basic theory of large model and the implementation of related applications, the research of large model based on NLP will enter a period of rapid development. |
Keywords: | NLP; Foundation Models; Bibliometric; Content Analysis |
DOI: | 10.57237/j.cst.2023.04.002 |
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