Fake News Detection Using Neural Network

Ushashree P, A. Naik, Siddarth Gurav, Ankit Kumar, Chethan S R, Madhumala B S
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引用次数: 1

Abstract

This paper uses capabilities of deep learning algorithms Long Short-Term Memory (LSTM) models for the detection of hoax news. In today's world Fake news has become a major problem, as it can spread quickly and have a significant impact on public opinion. Traditional methods for detecting fake news have relied on fact-checking and manual verification, which are time-consuming and not always effective. With the increasing availability of news articles and social media posts, there is a need for automated methods for detecting fake news. One of the effective ways used to eradicate the fake news is adopting LSTM models that have shown considerable results in a variety of natural language processing tasks, including text classification and sentiment analysis. This paper describes how to use LSTM for fake news detection and evaluates its performance on a news article dataset.
基于神经网络的假新闻检测
本文利用深度学习算法的长短期记忆(LSTM)模型来检测恶作剧新闻。在当今世界,假新闻已经成为一个主要问题,因为它可以迅速传播,并对公众舆论产生重大影响。检测假新闻的传统方法依赖于事实核查和人工核实,这既耗时又不总是有效。随着新闻文章和社交媒体帖子的可用性越来越高,需要自动检测假新闻的方法。根除假新闻的有效方法之一是采用LSTM模型,该模型在各种自然语言处理任务(包括文本分类和情感分析)中显示出相当大的效果。本文描述了如何使用LSTM进行假新闻检测,并评估了其在新闻文章数据集上的性能。
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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