Quantum-inspired firefly algorithm with ant miner plus for fake news detection

Kanta Prasad Sharma, A. Sai Manideep, Shailesh Kulkarni, J. Gowrishankar, Binod Kumar Choudhary, Jatinder Kaur, Anita Gehlot
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Abstract

Nowadays, technology has shifted the way individuals access news from conventional media sources to social media platforms. The active engagement of people with social media platforms leads them to consume news without confirming its source or legitimacy. This facilitated the dissemination of more manipulated and false information in the form of rumors and fake news. Fake news can affect public opinion and create chaos and panic among the population. Thus, it is essential to employ an advanced methodology to identify fake news with high precision. This research work has proposed the concept of the quantum-inspired firefly algorithm with the ant miner plus algorithm (QFAMP) for more effective fake news detection. The proposed QFAMP algorithm utilizes the attributes of quantum computing (QC), the firefly algorithm (FA), and the ant miner plus algorithm (AMP). Here, the QFA approach ensures the effective exploitation of the firefly agents until the agents are able to search for the brighter firefly. Further, the AMP algorithm utilizes the best ants with higher pheromone concentrations for global exploration, which also avoids the premature convergence of the QFA agents. In addition, the AMP algorithm serves as an efficient data mining variant that is effective for the classification of fake news. The efficacy of the proposed QFAMP algorithm is evaluated for the dataset of FakeNewsNet, which is composed of two sub-categories: BuzzFeed and PolitiFact. The experimental evaluations indicate the effective performance of the proposed algorithm compared to the other techniques.
量子启发萤火虫算法与蚂蚁矿工加法用于假新闻检测
如今,技术已将个人获取新闻的方式从传统媒体来源转向社交媒体平台。人们对社交媒体平台的积极参与导致他们在没有确认新闻来源或合法性的情况下消费新闻。这就为以谣言和假新闻的形式传播更多被操纵的虚假信息提供了便利。假新闻会影响公众舆论,在民众中制造混乱和恐慌。因此,必须采用先进的方法来高精度地识别假新闻。这项研究工作提出了量子启发萤火虫算法与蚂蚁矿工加算法(QFAMP)的概念,以实现更有效的假新闻检测。所提出的 QFAMP 算法利用了量子计算(QC)、萤火虫算法(FA)和蚂蚁矿工加算法(AMP)的特性。其中,QFA 方法确保有效利用萤火虫代理,直到代理能够搜索到更亮的萤火虫。此外,AMP 算法利用信息素浓度较高的最佳蚂蚁进行全局探索,这也避免了 QFA 代理的过早收敛。此外,AMP 算法还是一种高效的数据挖掘变体,能有效地对假新闻进行分类。我们针对 FakeNewsNet 数据集评估了所提出的 QFAMP 算法的有效性,该数据集由两个子类别组成:该数据集由两个子类别组成:BuzzFeed 和 PolitiFact。实验评估结果表明,与其他技术相比,所提出的算法性能卓著。
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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