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Application and Development Prospects of AI in News Editing

Shaobin Zuo

Abstract


The application of artificial intelligence (AI) in news editing is becoming increasingly widespread. This paper systematically reviews the current applications of AI in news content generation, data analysis, news prediction, distribution, and recommendation systems. It
analyzes its profound impact on the news industry and explores future development trends and industry practice recommendations. By effectively utilizing AI technology, news organizations can significantly improve the efficiency and quality of news production, driving innovation
and development in news dissemination. The continuous advancement of AI technology presents unprecedented opportunities for the news
industry. This paper aims to provide valuable references for academia and industry to promote the healthy development of AI technology in
the field of news communication.

Keywords


Artificial Intelligence; News Communication; News Editing; Deep Learning

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References


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