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Proceedings ArticleDOI

A Survey on Machine Learning to Detect Creation of Fake Identities by Human vs. Bots

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TLDR
In this paper , a novel algorithm called SVM-NN is proposed in order to effectively detect phone Instagram accounts, which can accurately classify about 89% of the users in the classification dataset.
Abstract
Online social networks are more prevalent than ever and have become deeply ingrained in people’s social lives. Through online social networks, they chat with one another, share data, organize events, and even run their own online companies. In order to steal personal information, spread destructive activities, and publish fake information, attackers and imposters have been drawn to OSNs because of their explosive growth and the vast amount of personal data they collect from their users. On the contrary, researchers have started to look into reliable strategies for identifying fake accounts and questionable activities using account attributes. However, several of the employed account variables have no impact at all or have a negative effect on the results. Furthermore, employing independent categorization algorithms does not necessarily yield positive outcomes. In order to effectively detect phone Instagram accounts, a novel algorithm called SVM-NN is proposed in this research. There were utilized four feature evaluation and data reduction procedures. The support vector machine, neural network, and the most current technique, SVMNN, were used to determine whether the chosen accounts were actual or spam. SVM-NN outperforms SVM and NN, using fewer characteristics while still being able to accurately classify about 89% of the users in our classification dataset.

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Journal ArticleDOI

Fame for sale

TL;DR: A novel Class A classifier general enough to thwart overfitting, lightweight thanks to the usage of the less costly features, and still able to correctly classify more than 95% of the accounts of the original training set.
Proceedings ArticleDOI

Detecting Clusters of Fake Accounts in Online Social Networks

TL;DR: A scalable approach to finding groups of fake accounts registered by the same actor by using a supervised machine learning pipeline for classifying {\em an entire cluster} of accounts as malicious or legitimate.
Journal ArticleDOI

Machine learning in adversarial environments

TL;DR: The four papers in this special issue provide a standard taxonomy of the types of attacks that can be expected in an adversarial framework, demonstrate how to design classifiers that are robust to deleted or corrupted features, and provide approaches to detect web pages designed to manipulate web page scores returned by search engines.
Journal ArticleDOI

Using Machine Learning to Detect Fake Identities: Bots vs Humans

TL;DR: The research discussed in this paper applies engineered features from attributes, such as “friend-count” and “follower-count,” to a set of fake human accounts in the hope of advancing the successful detection of fake identities created by humans on SMPs.
Journal ArticleDOI

Multiple Account Identity Deception Detection in Social Media Using Nonverbal Behavior

TL;DR: This work presents a detection method based on nonverbal behavior for identity deception that results in high detection accuracy over previous methods proposed while being computationally efficient for the social media environment.
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How effective are machine learning algorithms in differentiating between human and bot identities on social media platforms?

Machine learning algorithms, particularly SVM-NN, are highly effective in distinguishing between human and bot identities on social media platforms, achieving an accuracy of around 89%.