Aquila optimized feedback artificial tree for detection of fake news and impact identification

Web Intell. Pub Date : 2022-11-10 DOI:10.3233/web-220046
B. Venkateswarlu, V. V. Shenoi, Praveen Tumuluru
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引用次数: 1

Abstract

In recent days, social media is termed a major source for several people residing over the world because of less cost, simpler accessibility, and quick dissemination. However, it comes with dubious trustworthiness and is of high risk in exposing fake news. Hence, the automated discovery of fake news is an essential task. An innovative model is provided to identify fake news considering social media. Here, the BERT model is utilized to perform tokenization in order to produce tokens. Multiple features linked with the data are analyzed for detecting the behavior using the deep model. The features, like Term Frequency-Inverse Document Frequency (TF-IDF), SentiWordNet scores, and sentence level features are obtained to automatically learn the features. Automatic discovery of fake news is done with Aquila Feedback Artificial tree-based Deep Residual Network (AFAT-based DRN). The optimum weight tuning of DRN is executed with AFAT and the AFAT is the fusion of Aquila optimizer (AO) and Feedback artificial tree (FAT). The impact detection of fake news is done with AFAT-based DRN, which helps to detect how many of them shared the fake news. The AFAT-based DRN offered high competence with utmost sensitivity of 92.3%, testing accuracy of 91.6%, and specificity of 91.9%.
Aquila优化了假新闻检测和影响识别的反馈人工树
最近几天,社交媒体被称为居住在世界各地的一些人的主要来源,因为成本更低,更简单的可访问性和快速传播。然而,它的可信度值得怀疑,在揭露假新闻方面风险很高。因此,自动发现假新闻是一项必不可少的任务。提供了一种考虑社交媒体的假新闻识别创新模型。在这里,BERT模型用于执行标记化以生成标记。分析与数据相关联的多个特征,利用深度模型检测行为。获得词频-逆文档频率(TF-IDF)、SentiWordNet分数、句子级特征等特征,自动学习特征。假新闻的自动发现是通过基于Aquila反馈人工树的深度残差网络(AFAT-based DRN)完成的。该算法是Aquila优化器(AO)和反馈人工树(FAT)的融合。假新闻的影响检测是通过基于afat的DRN来完成的,这有助于检测有多少人分享了假新闻。基于afat的DRN具有较高的能力,最高灵敏度为92.3%,检测准确率为91.6%,特异性为91.9%。
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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