Provenance Detection of Online News Article

R. Alsuhaymi
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引用次数: 1

Abstract

At present, with the current wide spread of information on the social media, the recipient or the researcher needs more details about the received information or spread, including the provenance. With the current explosion of the news websites, there is a question of credibility of news articles on the internet. It is important to know whether the news is correct or not. This paper focuses on identifying the provenance of news articles. Also, trace the provenance of news articles often to see where did the first publication of such news appear. Is the news publication true (the credibility of the news), or is the news quoting from the provenance of the news on the news website or is plagiarism and redistributed on news websites on the Internet? In this paper, we will answer these questions through the design and implementation of two techniques Google Search API and Google Custom Search that will define the provenance of news articles through the technique Topic Detection and Tracking (TDT). Therefore, verifies the proposed technical quality in terms of performance metrics through several different experiments. Based on these experiments and tests it were discovered that the technique Google Search API is better performance than Google Custom Search in detecting the provenance of news articles. The Google Search API is the best technique, depending on the user satisfaction, the time it takes to view the results and the accuracy and validity. So, the result of the Google Search API is 90% while Google Custom Search 70%.
网络新闻文章的来源检测
目前,随着当前信息在社交媒体上的广泛传播,接收者或研究人员需要更多关于收到的信息或传播的细节,包括出处。随着当前新闻网站的爆炸式发展,互联网上的新闻文章存在可信度问题。知道这个消息是否正确很重要。本文的重点是确定新闻文章的出处。此外,经常追踪新闻文章的出处,看看这些新闻的首次发布是在哪里出现的。新闻出版物是真实的(新闻的可信度),还是新闻引用了新闻网站上新闻的出处,还是抄袭并在互联网上的新闻网站上重新分发?在本文中,我们将通过设计和实现Google Search API和Google Custom Search两种技术来回答这些问题,这两种技术将通过主题检测和跟踪(TDT)技术来定义新闻文章的出处。因此,通过几个不同的实验,从性能指标的角度验证了所提出的技术质量。基于这些实验和测试发现,在检测新闻文章的出处方面,谷歌搜索API技术比谷歌定制搜索技术具有更好的性能。谷歌搜索API是最好的技术,这取决于用户满意度、查看结果所需的时间以及准确性和有效性。因此,谷歌搜索API的结果是90%,而谷歌自定义搜索的结果是70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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