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Chrome Extension For Malicious URLs detection in Social Media Applications Using Artificial Neural Networks And Long Short Term Memory Networks

机译:Chrome扩展程序,用于使用人工神经网络和长期短期记忆网络检测社交媒体应用程序中的恶意URL

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Social media applications have become an integral part of our life, business and society today. Due to their increasing number of users and growing popularity, many organisations use them as a medium to generate income. The businesses use social media analytics and advertisements to increase their revenue. Although social media applications were initially built to connect people across the globe, they have now turned into one of the most favoured ways of propagation of cyber crimes. Most users lack cyber awareness and fall prey to the malicious activities distributed via Uniform Resource Locators (URLs) and advertisements. When a user visits the malicious URL, it makes the hackers privy to a lot of personal and sensitive information of the user. To overcome the problem of malicious URLs victimising users we propose a tool deployed as a chrome extension. This tool, analyses URLs and classifies them using two different neural networks, Artificial Neural Networks (ANN) and Long Short-Term Memory (LSTM) networks which is a specific type of Recurrent Neural Network (RNN). The major objective of the proposed model is to aid the users to avoid becoming a victim of malicious and fraudulent activities like malicious URLs, phishing and social engineering that favour social media as their target medium by detecting them accurately. The model proposed is scalable, easy to train and compatible with devices of varied hardware specifications. The proposed model gives excellent accuracy and overcomes several issues faced by the existing systems.
机译:社交媒体应用已成为当今我们生活,商业和社会不可或缺的一部分。由于用户数量的增加和受欢迎程度的提高,许多组织将其用作产生收入的媒介。这些企业使用社交媒体分析和广告来增加收入。尽管最初构建社交媒体应用程序是为了联系全球各地的人们,但如今它们已成为最受欢迎的网络犯罪传播方式之一。大多数用户缺乏网络意识,并且容易受到通过统一资源定位符(URL)和广告分发的恶意活动的攻击。当用户访问恶意URL时,它使黑客无法使用该用户的许多个人和敏感信息。为了克服恶意URL侵害用户的问题,我们提出了一种部署为chrome扩展程序的工具。该工具分析URL,并使用两种不同的神经网络(人工神经网络(ANN)和长期短期记忆(LSTM)网络)对URL进行分类,后者是递归神经网络(RNN)的一种特殊类型。提出的模型的主要目的是帮助用户避免被恶意URL欺诈,网络钓鱼和社会工程等恶意和欺诈活动的受害者,这些活动通过准确检测社交媒体作为其目标媒体。提出的模型是可扩展的,易于训练的,并且与各种硬件规格的设备兼容。提出的模型具有出色的准确性,并克服了现有系统所面临的几个问题。

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