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RESEARCH ON THE EFFICIENCY AND ACCURACY OF GENERATIVE AI IN THE EDITORIAL PROCESS OF SCIENTIFIC JOURNALS

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Volume 2, Issue 2, Pp 28-36, 2024

DOI: 10.61784/wjikmv2n295

Author(s)

Lin Zhong 1ChaoMin Gao 2*

Affiliation(s)

1 Youjiang Medical University For Nationalities, Journal Editorial Department, Baise 533000, Guangxi, China.

2 Baise University, School of Business Administration, Baise 533000, Guangxi, China.

Corresponding Author

ChaoMin Gao

ABSTRACT

This study aims to explore the application of generative artificial intelligence (AI) in the editorial process of scientific journals and its impact on editing efficiency and accuracy, thereby foreseeing potential changes in future scientific communication. Utilizing literature reviews and data analysis, this study focuses on literature published between 2020 and 2023, involving top academic journals, conference papers, and authoritative databases. Through qualitative analysis, content analysis, and comparative analysis, the study comprehensively assesses the application of generative AI in the editing of scientific journals. The research shows that generative AI has significant advantages in the preliminary review, language polishing, and format standardization of scientific journal submissions. Although it enhances editing efficiency and manuscript quality, AI has limitations in understanding complex academic content and maintaining high accuracy. The application of generative AI in the editing of scientific journals is in a rapid development stage, but its potential is immense, especially in improving editing efficiency and accuracy. Future research needs to explore in-depth the limitations and ethical responsibilities of AI, as well as the collaboration model between AI and human editors, to ensure the quality and integrity of scientific journal content.

KEYWORDS

Generative Artificial Intelligence; Technological Journal Editing; Editorial Efficiency; Content Accuracy; Challenges in AI Applications

CITE THIS PAPER

Lin Zhong, ChaoMin Gao. Research on the efficiency and accuracy of generative AI in the editorial process of scientific journals. World Journal of Information and Knowledge Management. 2024, 2(2): 28-36. DOI: 10.61784/wjikmv2n295.

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