Fake news detection: A RNN-LSTM, Bi-LSTM based deep learning approach

Govind Singh Mahara, Sharad Gangele
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引用次数: 3

Abstract

Fake news is a new phenomenon that promotes misleading information and fraud via internet social media or traditional news sources. Fake news is readily manufactured and transmitted across numerous social media platforms nowadays, and it has a significant influence on the real world. It is vital to create effective algorithms and tools for detecting misleading information on social media platforms. Most modern research approaches for identifying fraudulent information are based on machine learning, deep learning, feature engineering, graph mining, image and video analysis, and newly built datasets and online services. There is a pressing need to develop a viable approach for readily detecting misleading information. The deep learning LSTM and Bi-LSTM model was proposed as a method for detecting fake news, In this work. First, the NLTK toolkit was used to remove stop words, punctuation, and special characters from the text. The same toolset is used to tokenize and preprocess the text. Since then, GLOVE word embeddings have incorporated higher-level characteristics of the input text extracted from long-term relationships between word sequences captured by the RNN-LSTM, Bi-LSTM model to the preprocessed text. The proposed model additionally employs dropout technology with Dense layers to improve the model's efficiency. The proposed RNN Bi-LSTM-based technique obtains the best accuracy of 94%, and 93% using the Adam optimizer and the Binary cross-entropy loss function with Dropout (0.1,0.2), Once the Dropout range increases it decreases the accuracy of the model as it goes 92% once Dropout (0.3).
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假新闻检测:基于RNN-LSTM、Bi-LSTM的深度学习方法
假新闻是一种通过网络社交媒体或传统新闻来源传播误导性信息和欺诈行为的新现象。如今,假新闻很容易在众多社交媒体平台上制造和传播,对现实世界产生了重大影响。创建有效的算法和工具来检测社交媒体平台上的误导性信息至关重要。大多数用于识别欺诈信息的现代研究方法都是基于机器学习、深度学习、特征工程、图挖掘、图像和视频分析,以及新建的数据集和在线服务。迫切需要开发一种可行的方法,以便随时发现误导性信息。本文提出了深度学习LSTM和Bi-LSTM模型作为假新闻检测的方法。首先,使用NLTK工具箱从文本中删除停止词、标点符号和特殊字符。使用相同的工具集对文本进行标记和预处理。从那时起,GLOVE词嵌入将从RNN-LSTM、Bi-LSTM模型捕获的词序列之间的长期关系中提取的输入文本的高级特征纳入到预处理文本中。该模型还采用了密集层的dropout技术来提高模型的效率。采用Adam优化器和Dropout(0.1,0.2)的二元交叉熵损失函数,模型的准确率达到了93%。一旦Dropout范围增大,模型的准确率就会下降,一旦Dropout(0.3),模型的准确率就会下降92%。
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