Optimized generative adversarial network with fractional calculus based feature fusion using Twitter stream for spam detection

V. B, V. V.
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引用次数: 5

Abstract

ABSTRACT The social networks continue to augment their popularity due to the increased usage of the Internet. The people become connected using social media like Facebook and Twitter. This has increased impulsive communication, namely, spam and is utilized in accumulating information of an individual or marketing to cause offense against people. Spam detection in Twitter is a major issue because of small text and elevated language inconsistency in social media. Thus, it is imperative to devise a spam detection model that poses the ability to detect spam messages using Twitter data. This paper devises a novel spam detection model using a stream of Twitter data. Here, the data transformation is done on the input data using Yeo-Jhonson (YJ) transformation for making the data suitable for processing. The feature fusion is performed using Renyi entropy and Deep Belief Network (DBN). Moreover, the spam detection is performed using the Generative Adversial Network (GAN), which is trained by the proposed Conditional Autoregressive Value at Risk-Sail Fish (CAViaR-SF) algorithm. The proposed CAViaR-SF algorithm is devised by integrating Sail Fish optimizer (SFO) and Conditional Autoregressive Value at Risk (CAViaR) algorithm. The proposed CAViaR-SF offered maximal precision of 97.3%, recall of 99.2%, and F-measure of 98.2%.
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基于分数阶微积分的特征融合优化生成对抗网络,利用Twitter流进行垃圾邮件检测
随着互联网使用的不断增加,社交网络的受欢迎程度也在不断提高。人们通过Facebook和Twitter等社交媒体联系在一起。这增加了冲动通信,即垃圾邮件,并被用于积累个人信息或营销,以引起对人们的冒犯。Twitter中的垃圾邮件检测是一个主要问题,因为社交媒体中的文本较小,语言不一致程度较高。因此,必须设计一个垃圾邮件检测模型,使其能够使用Twitter数据检测垃圾邮件。本文利用Twitter数据流设计了一种新的垃圾邮件检测模型。在这里,使用yeo - johnson (YJ)转换对输入数据进行数据转换,以使数据适合于处理。利用Renyi熵和深度信念网络(Deep Belief Network, DBN)进行特征融合。此外,垃圾邮件检测使用生成式对抗网络(GAN)进行,GAN由提出的条件自回归值风险帆鱼(CAViaR-SF)算法训练。将帆鱼优化器(SFO)和条件自回归风险值(CAViaR)算法相结合,设计了CAViaR- sf算法。CAViaR-SF的最大精密度为97.3%,召回率为99.2%,F-measure为98.2%。
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