计算机科学
独创性
背景(考古学)
代表(政治)
标题
元数据
人工智能
数据科学
自然语言处理
万维网
语言学
历史
社会学
定性研究
社会科学
哲学
考古
政治
政治学
法学
作者
Hei‐Chia Wang,Martinus Maslim,Hung‐Yu Liu
出处
期刊:Data technologies and applications
[Emerald (MCB UP)]
日期:2023-08-29
卷期号:58 (2): 243-266
被引量:3
标识
DOI:10.1108/dta-03-2023-0072
摘要
Purpose A clickbait is a deceptive headline designed to boost ad revenue without presenting closely relevant content. There are numerous negative repercussions of clickbait, such as causing viewers to feel tricked and unhappy, causing long-term confusion, and even attracting cyber criminals. Automatic detection algorithms for clickbait have been developed to address this issue. The fact that there is only one semantic representation for the same term and a limited dataset in Chinese is a need for the existing technologies for detecting clickbait. This study aims to solve the limitations of automated clickbait detection in the Chinese dataset. Design/methodology/approach This study combines both to train the model to capture the probable relationship between clickbait news headlines and news content. In addition, part-of-speech elements are used to generate the most appropriate semantic representation for clickbait detection, improving clickbait detection performance. Findings This research successfully compiled a dataset containing up to 20,896 Chinese clickbait news articles. This collection contains news headlines, articles, categories and supplementary metadata. The suggested context-aware clickbait detection (CA-CD) model outperforms existing clickbait detection approaches on many criteria, demonstrating the proposed strategy's efficacy. Originality/value The originality of this study resides in the newly compiled Chinese clickbait dataset and contextual semantic representation-based clickbait detection approach employing transfer learning. This method can modify the semantic representation of each word based on context and assist the model in more precisely interpreting the original meaning of news articles.
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