Instagram Fake and Automated Account Detection: A Review

Abilash S. B, Sujitha R
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Abstract

Fake engagement is one of the significant problems in Online Social Networks (OSNs) which is used to increase the popularity of an account in an inorganic manner. The detection of fake engagement is crucial because it leads to loss of money for businesses, wrong audience targeting in advertising, wrong product predictions systems, and unhealthy social network environment. This study is related with the detection of fake and automated accounts which leads to fake engagement on Instagram. Prior to this work, there were no publicly available dataset for fake and automated accounts. For this purpose, two datasets have been published for the detection of fake and automated accounts. For the detection of these accounts, machine learning algorithms like Naive Bayes, Logistic Regression, Support Vector Machines and Neural Networks are applied. Additionally, for the detection of automated accounts, cost sensitive genetic algorithm is proposed to handle the unnatural bias in the dataset. To deal with the unevenness problem in the fake dataset, Smote-nc algorithm is implemented. In this paper investigating various methods used in the existing work for the Instagram fake account detection.
Instagram虚假和自动账户检测:回顾
虚假参与是在线社交网络(Online Social Networks,简称OSNs)的一个重要问题,它被用来以无机的方式增加一个账户的受欢迎程度。检测虚假参与是至关重要的,因为它会导致企业损失资金,广告中的错误受众定位,错误的产品预测系统以及不健康的社交网络环境。这项研究与检测虚假账户和自动账户有关,这些账户会导致Instagram上的虚假参与度。在这项工作之前,没有公开的假账户和自动账户数据集。为此,已经发布了两个数据集,用于检测虚假账户和自动账户。为了检测这些账户,使用了朴素贝叶斯、逻辑回归、支持向量机和神经网络等机器学习算法。此外,对于自动账户的检测,提出了成本敏感遗传算法来处理数据集中的非自然偏差。为了解决假数据集的不均匀性问题,实现了Smote-nc算法。本文对现有工作中用于Instagram虚假账户检测的各种方法进行了研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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