利用机器学习检测假新闻

Mohammed Obaid -, Md. Salman Areeb -, Mir Wajahat Ali Khan -, Batchu Nagalakshmi -, Kadime Deepthi -
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引用次数: 0

摘要

网络媒体合作,尤其是组织内部的消息传播,是如今令人难以置信的数据来源。从一个人的角度来看,它的微不足道的努力,直接访问和快速分散的数据,导致个人从网站上关注和全球新闻。Twitter是最引人注目的进步新闻来源之一,也是最流行的新闻传播媒介之一。众所周知,它会通过事先散布流言蜚语而造成广泛的损害。因此,机动化假新闻识别是保持健康的网络媒体和休闲联想的基础。我们提出了一个从twitter帖子中感知制造新闻消息的模型,通过理解如何设想准确性检查,考虑在twitter数据集中自动化制造新闻区分证明。随后,我们展示了五种著名的机器学习计算之间的相关性,类似于支持向量机、Naïve贝叶斯方法、逻辑回归和递归神经网络模型,以独立展示在数据集上分组执行的有效性。我们的探索结果表明,SVM和Naïve贝叶斯分类器的计算方式不同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Fake News Using Machine Learning
Online media cooperation particularly the word getting out around the organization is an incredible wellspring of data these days. From one's point of view, its insignificant effort, direct access, and speedy scattering of data that lead individuals to watch out and global news from web sites. Twitter being a champion among the most notable progressing news sources moreover winds up a champion among the most prevailing news emanating mediums. It is known to cause broad damage by spreading pieces of tattle beforehand. Therefore, motorizing fake news acknowledgment is rudimentary to keep up healthy online media and casual association. We proposes a model for perceiving manufactured news messages from twitter posts, by making sense of how to envision exactness examinations, considering automating fashioned news distinguishing proof in Twitter datasets. Subsequently, we played out a correlation between five notable Machine Learning calculations, similar to Support Vector Machine, Naïve Bayes Method, Logistic Regression and Recurrent Neural Network models, independently to exhibit the effectiveness of the grouping execution on the dataset. Our exploratory outcome indicated that SVM and Naïve Bayes classifier beats different calculation.
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