Fadhli Imen, Hlaoua Lobna, Omri Mohamed Nazih
MARS Research Laboratory LR17ES05, University of Sousse, Sousse, Tunisia.
Soc Netw Anal Min. 2023;13(1):57. doi: 10.1007/s13278-023-01066-z. Epub 2023 Mar 29.
In recent years, the social networks that have become most exploited sources of information, such as Facebook, Instagram, LinkedIn, and Twitter, have been considered the main sources of non-credible information. False information on these social networks has a negative impact on the credibility of conversations. In this article, we propose a new deep learning-based credibility conversation detection approach in social network environments, called CreCDA. CreCDA is based on: (i) the combination of post and user features in order to detect credible and non-credible conversations; (ii) the integration of multi-dense layers to represent features more deeply and to improve the results; (iii) sentiment calculation based on the aggregation of tweets. In order to study the performance of our approach, we have used the standard PHEME dataset. We compared our approach with the main approaches we have studied in the literature. The results of this evaluation show the effectiveness of sentiment analysis and the combination of text and user levels to analyze conversation credibility. We recorded the mean precision of credible and non-credible conversations at 79%, the mean recall at 79%, the mean F1-score at 79%, the mean accuracy at 81%, and the mean G-Mean at 79%.
近年来,诸如脸书、照片墙、领英和推特等已成为被大量利用的信息来源的社交网络,被视作不可信信息的主要源头。这些社交网络上的虚假信息对对话的可信度产生负面影响。在本文中,我们提出一种在社交网络环境中基于深度学习的全新可信度对话检测方法,称为CreCDA。CreCDA基于以下几点:(i)结合帖子和用户特征以检测可信和不可信对话;(ii)整合多个密集层以更深入地表示特征并改善结果;(iii)基于推文聚合进行情感计算。为研究我们方法的性能,我们使用了标准的PHEME数据集。我们将我们的方法与我们在文献中研究的主要方法进行了比较。该评估结果表明了情感分析以及文本和用户层面相结合以分析对话可信度的有效性。我们记录了可信和不可信对话的平均精确率为79%,平均召回率为79%,平均F1分数为79%,平均准确率为81%,平均几何均值为79%。