基于机器学习的Twitter垃圾邮件账户检测:综述

Shivangi Gheewala, Rakesh Patel
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引用次数: 21

摘要

在线社交网络是人们建立和管理社会关系的新兴传播媒介。在osn中,通常有数十亿用户参与社交互动、内容和意见传播、网络、推荐、侦察、警报和社交活动。社交网络的普及为社交网络的研究开辟了新的视角和挑战,引起了许多领域的兴趣。社交网络是社会活动、商业活动、娱乐和信息交换的场所。它建立了一个世界范围内的连接环境,人们的社区分享他们的兴趣和活动,或者谁感兴趣的兴趣和他人的活动。尽管社交网络给人们带来了巨大的好处,同时也伤害了人们在社交平台上发生的各种恶作剧活动。这给我们的社会造成了巨大的经济损失,甚至威胁到国家安全。所有的社交网络Facebook, Twitter, LinkedIn等都很容易受到恶意软件活动的影响。推特是最大的微博网络平台之一,它有超过5亿条推文,平均每天有数百万用户在推特上发布。如此多功能性和广泛的使用,Twitter很容易受到恶意活动的入侵。恶意活动包括恶意软件入侵、垃圾邮件分发、社交攻击等。垃圾邮件发送者使用社会工程攻击策略发送垃圾推文、垃圾url等。这使得twitter成为了异常垃圾账户泛滥的理想场所。这种影响促使研究人员开发一种模型来分析、检测twitter上的诽谤行为并从中恢复。推特网络充斥着数以千万计的虚假垃圾信息,可能会危及普通用户的安全和隐私。提高真实用户的安全性和识别垃圾邮件配置文件成为研究的关键部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based Twitter Spam Account Detection: A Review
Online social networks (OSNs) are emerging communication medium for people to establish and manage social relationships. In OSNs, regularly billions of users are involved in social interaction, content and opinion dissemination, networking, recommendations, scouting, alerting, and social campaigns. The popularization of OSNs open up a new perspectives and challenges to the study of social networks, being of interest to many fields. Social network is a place where social activities, business oriented activities, entertainment, and information are exchanged. It establish a worldwide connectivity environment where communities of people share their interests and activities, or who are interested in interests and activities of others Although social network has given immense benefits to people at the same time harming people with various mischievous activities that take place on social platforms. This causes significant economic loss to our society and even threaten the national security. All the social networks Facebook, Twitter, LinkedIn, etc. are highly susceptible to malware activities. Twitter is one of the biggest microblogging networking platform, it has more than half a billion tweets are posted every day in average by millions of users on Twitter. Such a versatility and wide spread of use, Twitter easily get intruded with malicious activities. Malicious activities includes malware intrusion, spam distribution, social attacks, etc. Spammers use social engineering attack strategy to send spam tweets, spam URLs, etc. This made twitter an ideal arena for proliferation of anomalous spam accounts. The impact stimulates researchers to develop a model that analyze, detects and recovers from defamatory actions in twitter. Twitter network is inundated with tens of millions of fake spam profiles which may jeopardize the normal user’s security and privacy. To improve real users safety and identification of spam profiles become key parts of the research.
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