This paper aims to present how the application of Natural Language Processing (NLP) and data augmentation techniques can improve the performance of a neural network for better detection of fake news in the Portuguese language. Fake news is one of the main controversies during the growth of the internet in the last decade. Verifying what is fact and what is false has proven to be a difficult task, while the dissemination of false news is much faster, which leads to the need for the creation of tools that, automated, assist in the process of verification of what is fact and what is false. In order to bring a solution, an experiment was developed with neural network using news, real and fake, which were never seen by artificial intelligence (AI). There was a significant performance in the news classification after the application of the mentioned techniques.
翻译:本文旨在介绍应用自然语言处理和数据扩增技术如何改善神经网络的性能,以更好地发现葡萄牙语的假消息;假消息是过去十年互联网增长期间的主要争议之一;验证事实和假消息证明是一项困难的任务,而传播假消息的速度要快得多,这就需要创造工具,自动化地协助核查事实和假消息;为了找到解决办法,利用真实和假消息与神经网络进行了实验,而人工智能从未见过这些消息(大赦国际);应用上述技术后,新闻分类表现显著。