A novel hybrid multi-thread metaheuristic approach for fake news detection in social media.

Gungor Yildirim
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引用次数: 4

Abstract

In fake news detection, intelligent optimization seems to be a more effective and explainable solution methodology than the black-box methods that have been extensively used in the literature. This study takes the optimization-based method one step further and proposes a novel, multi-thread hybrid metaheuristic approach for fake news detection in social media. The most innovative feature of the proposed method is that it uses a supervisor thread mechanism, which simultaneously monitors and improves the performance and search patterns of metaheuristic algorithms running parallel. With the supervisor thread mechanism, it is possible to analyse different key attribute combinations in the search space. In addition, this study develops a software framework that allows this model to be implemented easily. It tests the performance of the proposed model on three different data sets, respectively containing news about Covid-19, the Syrian War, and daily politics. The proposed method is evaluated in comparison to the results of fifteen different well-known deep models and classification algorithms. Experimental results prove the success of the proposed model and that it can produce competitive results.

Abstract Image

Abstract Image

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一种新的混合多线程元启发式社交媒体假新闻检测方法。
在假新闻检测中,智能优化似乎是一种比文献中广泛使用的黑盒方法更有效和可解释的解决方法。本研究将基于优化的方法向前推进了一步,并提出了一种新颖的多线程混合元启发式方法,用于社交媒体中的假新闻检测。该方法最大的创新之处在于它使用了一个监督线程机制,可以同时监控和改进并行运行的元启发式算法的性能和搜索模式。通过监督线程机制,可以分析搜索空间中不同的键属性组合。此外,本研究还开发了一个软件框架,使该模型易于实现。它在三个不同的数据集上测试了所提出模型的性能,分别包含有关Covid-19的新闻,叙利亚战争和日常政治。将该方法与15种不同的深度模型和分类算法的结果进行了比较。实验结果证明该模型是成功的,并能产生有竞争力的结果。
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