首页> 外文会议>International Conference on Social Informatics >Digitalized News on Non-communicable Diseases Coverage - What Are the Unhealthy Features of Media Content Induced for Chinese?
【24h】

Digitalized News on Non-communicable Diseases Coverage - What Are the Unhealthy Features of Media Content Induced for Chinese?

机译:非传染性疾病报道的数字化新闻-中国人诱导的媒体内容的不健康特征是什么?

获取原文

摘要

As non-communicable diseases (NCDs) have become widespread and are now the leading cause of death among populations worldwide, they are also increasingly the focus of media attention. The objective of this study is to focus on NCDs from media coverage with an understanding that media say something about the society producing it and future effects. The data integrates various newspaper coverage on NCDs from China, Taiwan, Hong Kong, and Macao. Online news data and machine-aided content analysis were employed to examine disease topics, causes, and ultimately to allocate responsibility. The methodology used emerging big social data analytics for analysis. A total of 32,685 newspaper articles covering NCDs were identified from 2010-2017. The topics of metabolic diseases were covered more frequently in mainland China, while cardiovascular diseases were predominately covered in the neighbouring areas. The study highlights the difference between news frames of NCDs and NCDs cause was induced predominantly by a focus on the risk factor of alcohol consumption. The discussion attempts to explain causative agents of diseases covered while provides an example of big social data analytics in journalism for larger social forces. In conclusion, this study addresses challenges researchers face when analyzing big data.
机译:随着非传染性疾病(NCDs)的普及和成为全球人口死亡的主要原因,它们也日益成为媒体关注的焦点。这项研究的目的是从媒体报道中重点关注非传染性疾病,同时要了解媒体对产生这种疾病的社会以及未来影响的看法。数据整合了来自中国,台湾,香港和澳门的NCD的各种报纸报道。使用在线新闻数据和机器辅助内容分析来检查疾病主题,原因,并最终分配责任。该方法使用新兴的大社交数据分析进行分析。从2010年至2017年,共鉴定了32,685篇涉及非传染性疾病的报纸文章。在中国大陆,代谢疾病的话题被广泛报道,而在邻近地区则主要报道心血管疾病。该研究强调了非传染性疾病新闻框架与非传染性疾病新闻原因之间的差异,主要是因为着眼于饮酒的危险因素。讨论试图解释所涵盖疾病的病因,同时为大型社会力量提供了新闻学中的大社会数据分析示例。总之,本研究解决了研究人员在分析大数据时面临的挑战。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号