基于初始网络和基于注意力的LSTM的Twitter垃圾邮件检测技术

M. Neha, M. S. Nair
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引用次数: 4

摘要

在线社交网站已经成为网络冲浪者联系和见面的一种众所周知的方式。Twitter成为了一个知名的微博客网站,客户可以在这里发布和关联被称为tweet的消息。随着这个社交网站的普及,垃圾邮件发送者瞄准Twitter传播垃圾邮件。因此,分析人员提出了几种垃圾邮件检测技术,以使Twitter成为一个没有垃圾邮件的平台。尽管如此,可访问的机器学习算法无法有效区分Twitter上的垃圾邮件发送者,因为未经请求的客户端对信息进行了合理的控制,以避免垃圾邮件被发现。因此,在这里,我们提出了一种基于深度学习技术的初步方法,该技术利用文本预测功能来检测垃圾邮件发送者。本文介绍了一种新颖的体系结构,该体系结构包含一个与LSTM叠加的一维降维初始模块和一个注意层。在该模型中,初始模块从GloVe词嵌入后的向量中提取特征,然后利用LSTM得到上下文表示。该模型还使用了一个注意层来对LSTM模块输出的数据进行注意。最后,利用s形分类器将标签分类为spam或ham。在这里,我们提出的模型的执行与四种基于机器学习的方法和两种基于深度学习的方法进行了比较,结果表明我们的方法获得了最佳结果,f1得分为95.74,准确度为95.75,精度为95.58。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Twitter Spam Detection Technique by Integrating Inception Network with Attention based LSTM
Online Social Networking sites have become a well-known way for web surfers to connect and meet. Twitter got to be a well-known micro blogging site that clients post and associate with messages known as tweets. As this networking site gains its popularity, spammers target Twitter to spread spam posts. Hence, several spam detection techniques have been proposed by analysts to create Twitter a spam-free stage. Be that as it may, the accessible machine learning algorithms cannot effectively distin- guish spammers on Twitter because of reasonable information controls by unsolicited clients to elude spam discovery. As a result, here, we present an incipient approach predicated on a deep learning technique that leverages a text-predicated feature to detect spammers. A novel architecture that contains a one-dimensional dimension reduction inception module stacked with LSTM along with an attention layer is introduced here. Within the proposed model, the inception module extricates the features from the vectors after GloVe word embedding, and then LSTM is utilized to get the context representations. An Attention layer is also used in this model to give attention to the data outputted from LSTM module. At long last, the sigmoid classifier is utilized to classify the labels as spam or ham. Here, the execution of our proposed model is compared with four machine learning-based and two deep learning-based approaches, exhibiting our approach acquired the best results with an F1-score of 95.74, accuracy of 95.75, and precision of 95.58.
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