College of Information Engineering, Henan University of Science and Technology, Luoyang, 471023, Henan, China.
Sci Rep. 2022 Sep 8;12(1):15238. doi: 10.1038/s41598-022-19444-6.
The spread of false content on microblogging platforms has created information security threats for users and platforms alike. The confusion caused by false content complicates feature selection during credibility evaluation. To solve this problem, a collaborative key point-based content credibility evaluation model, CECKP, is proposed in this paper. The model obtains the key points of the microblog text from the word level to the sentence level, then evaluates the credibility according to the semantics of the key points. In addition, a rumor lexicon constructed collaboratively during word-level coding strengthens the semantics of related words and solves the feature selection problem when using deep learning methods for content credibility evaluation. Experimental results show that, compared with the Att-BiLSTM model, the F1 score of the proposed model increases by 3.83% and 3.8% when the evaluation results are true and false respectively. The proposed model accordingly improves the performance of content credibility evaluation based on optimized feature selection.
微博平台上虚假内容的传播给用户和平台都带来了信息安全威胁。虚假内容造成的混淆使得可信度评估中的特征选择变得复杂。为了解决这个问题,本文提出了一种基于协同关键点的微博内容可信度评估模型 CECKP。该模型从词级到句级获取微博文本的关键点,然后根据关键点的语义进行可信度评估。此外,在词级编码过程中协同构建的谣言词典增强了相关词的语义,解决了使用深度学习方法进行内容可信度评估时的特征选择问题。实验结果表明,与 Att-BiLSTM 模型相比,当评估结果为真和假时,所提出模型的 F1 值分别提高了 3.83%和 3.8%。因此,该模型通过优化特征选择提高了内容可信度评估的性能。