基于迁移学习的假新闻分类

Muthu Lakshmi V., K. Vijayakumar, Suthanthira Devi P., Rajin Gangadharan, D. Suresh
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引用次数: 2

摘要

在过去十年中,信息通信技术日益复杂,极大地影响了传统广播媒体的传播。智能手机应用程序正日益削弱新的社会经济广播环境。这种趋势在工作场所、家庭和娱乐场所都是一样的。社交网络抢走了游戏的风头,并逐渐转向另一个时代,即“数字关系”时代,在这个时代,传统的人际社交互动被移动设备和社交网络所取代。由不法分子和社交媒体的辩护者宣传的这种虚假信息的后果是深远的,因为它导致了家庭、社区、伙伴关系、组织和整个文化的丑闻。本文的目的是通过使用技术来根除假冒媒体。在这篇文章中,我们提出并建立了一个模型,该模型结合了神经网络来识别和根除发布在社交媒体网络和网络论坛上的虚假短语。此外,我们将我们的工作Elmo vnet与当前最先进的模型进行了比较。实验结果表明,本文提出的Elmo VNetmodel比现有模型具有更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fake News Classification using Transfer Learning
The rising complexity of information communication technology has greatly affected communication through conventional broadcast media over the past decade. Smartphone applications are increasingly emasculating the new socio-economic broadcasting environment. The trend is the same in the workplace, at home and in recreation. Social networking has stolen the game and is increasingly shifting to another age, the era of “digital relationships,” in which conventional interpersonal social interactions are replaced by mobile devices and social networks. The consequences of such false information promoted by miscreants and apologists for social media are far-reaching because it has resulted in scandals in households, communities, partnerships, organizations, and culture as a whole. The purpose of this paper is to lead to the eradication of counterfeit media by the use of technology. In this article, we proposed and built a model that incorporates neural networks to identify and eradicate false phrases posted to social media networks and web forums. Also, we compared our work Elmo VNetwith current state-of the-art models. The experimental results demonstrated that the proposed Elmo VNetmodel have better accuracy rate than the existing models.
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