As technology grows faster, the news spreads through social media. In order to attract more readers and acquire additional profit, some news agencies reproduce massive news in a more appealing manner. Therefore, it is essential to accurately predict whether a news article is from official news agencies. This work develops a headline classification based on Convoluted Neural Network to determine credibility of a news article. The model primarily focuses on investigating key factors from headlines. These factors include word segmentation, part-of-speech tags, and sentiment features. With integrating these features into the proposed classification model, the demonstrated evaluation achieves 93.99% for accuracy.
翻译:随着技术的飞速发展,新闻通过社交媒体传播。为了吸引更多的读者和获取更多的利润,一些新闻机构以更吸引人的方式复制了大规模新闻。因此,必须准确预测新闻文章是否来自官方新闻机构。这项工作根据混杂神经网络开发了一个标题分类,以确定新闻文章的可信度。模型主要侧重于调查头条新闻中的关键因素。这些因素包括文字分割、部分语音标记和情绪特征。将这些特征纳入拟议的分类模式后,显示的评价准确性达到93.99%。