FaNDeR:基于媒体可靠性的假新闻检测模型

Y. Seo, Deokjin Seo, Chang-Sung Jeong
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引用次数: 11

摘要

随着媒体的发展,包括机器人写的报纸和许多不可靠的消息来源,很难区分新闻是真是假。在本文中,我们将提出一种新的假新闻检测模型FaNDeR(fake news detection model using media Reliability),它可以基于改进的CNN深度学习模型对问答系统中的新闻的真实程度进行有效的分类。我们的模型通过使用包含每种媒体真实性以及命题真实性的输入数据集进行训练来反映各种媒体的可靠性。我们的模型在数据增强、批量大小控制和模型修改方面针对媒体数据集设计了更高的精度。我们将通过迄今收集的数据集的训练来反映每种媒体的真实水平的趋势,从而表明我们的模型比统计方法具有更高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FaNDeR: Fake News Detection Model Using Media Reliability
With the development of media including newspaper written by robots and many unreliable sources, it’s getting hard to distinguish whether the news is true or not. In this paper, we shall present a novel fake news detection model, FaNDeR(Fake News Detection model using media Reliability) which can efficiently classify the level of truth for the news in the question answering system based on modified CNN deep learning model. Our model reflects the reliability of various medias by training with the input dataset which contains the truthfulness of each media as well as that of the proposition. Our model is designed for higher accuracy with media dataset in terms of data augmentation, batch size control and model modification. We shall show that our model has higher accuracy over statistical approach by reflecting the tendency of truth level for each media through the training of the dataset collected so far.
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