Design of Hyperparameter Tuned Deep Learning based Automated Fake News Detection in Social Networking Data

N. Kanagavalli, S. Priya, J. D
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引用次数: 2

Abstract

Recently, social networks have become more popular owing to the capability of connecting people globally and sharing videos, images and various types of data. A major security issue in social media is the existence of fake accounts. It is a phenomenon that has fake accounts that can be frequently utilized by mischievous users and entities, which falsify, distribute, and duplicate fake news and publicity. As the fake news resulted in serious consequences, numerous research works have focused on the design of automated fake accounts and fake news detection models. In this aspect, this study designs a hyperparameter tuned deep learning based automated fake news detection (HDL-FND) technique. The presented HDL-FND technique accomplishes the effective detection and classification of fake news. Besides, the HDLFND process encompasses a three stage process namely preprocessing, feature extraction, and Bi-Directional Long Short Term Memory (BiLSTM) based classification. The correct way of demonstrating the promising performance of the HDL-FND technique, a sequence of replications were performed on the available Kaggle dataset. The investigational outcomes produce improved performance of the HDL-FND technique in excess of the recent approaches in terms of diverse measures.
基于超参数调优深度学习的社交网络假新闻自动检测设计
最近,社交网络变得越来越流行,因为它能够连接全球的人们,分享视频、图像和各种类型的数据。社交媒体的一个主要安全问题是虚假账户的存在。这是一种拥有虚假账户的现象,可以被恶作剧的用户和实体经常利用,伪造,分发和复制虚假新闻和宣传。由于假新闻造成了严重的后果,许多研究工作都集中在设计自动虚假账户和假新闻检测模型上。在这方面,本研究设计了一种基于超参数调优深度学习的自动假新闻检测(HDL-FND)技术。本文提出的HDL-FND技术实现了对假新闻的有效检测和分类。此外,HDLFND过程包括预处理、特征提取和基于双向长短期记忆(BiLSTM)的分类三个阶段。为了证明HDL-FND技术的良好性能,我们在可用的Kaggle数据集上进行了一系列的复制。研究结果表明,HDL-FND技术的性能优于最近的各种测量方法。
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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