Sharing in Social News Websites: Examining the Influence of News Attributes and News Sharers

Long Ma, C. S. Lee, D. Goh
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引用次数: 8

Abstract

Social news websites (e.g. Digg, Reddit) have become a new and influential global phenomenon. Such websites present opportunities for individuals to participate in news creation and diffusion and thus have fundamentally transformed the ways people consume and share news. Yet, despite the popularity of these websites, factors influencing news sharing are not well documented. Hence, the objective of this study is to understand the determinants of news sharing in social news websites by examining the influence of news attributes as well as news sharers. A sample of 552 news stories was collected from a well-known and established social news website. Regression analysis was employed to analyze the data. Results indicated that in terms of news attributes, both the salience of news content and types of news were significant predictors of news sharing in social news websites. Specifically, news stories attracting more comments from users were more likely to be shared. We also found that soft news (e.g. sports and entertainment) were more frequently shared than hard news (e.g. politics and business). Contrary to expectations, the influence of news sharers did not significantly impact the extent of news sharing. The implications of the findings and directions for future research are discussed.
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社会新闻网站的分享:新闻属性和新闻分享者的影响
社会新闻网站(如Digg, Reddit)已经成为一个新的和有影响力的全球现象。这些网站为个人提供了参与新闻创作和传播的机会,从而从根本上改变了人们消费和分享新闻的方式。然而,尽管这些网站很受欢迎,但影响新闻分享的因素并没有得到很好的记录。因此,本研究的目的是通过考察新闻属性和新闻分享者的影响来了解社会新闻网站中新闻分享的决定因素。从一个知名的、成熟的社会新闻网站上收集了552个新闻故事。采用回归分析对数据进行分析。结果表明,在新闻属性方面,新闻内容的显著性和新闻类型都是社交新闻网站新闻分享的显著预测因子。具体来说,吸引更多用户评论的新闻故事更有可能被分享。我们还发现,软新闻(如体育和娱乐)比硬新闻(如政治和商业)更常被分享。与预期相反,新闻分享者对新闻分享程度的影响并不显著。讨论了研究结果的意义和未来的研究方向。
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