Fame for sale: efficient detection of fake Twitter followers
Stefano Cresci, Roberto Di Pietro, Marinella Petrocchi, Angelo, Spognardi, Maurizio Tesconi

TL;DR
This paper develops an efficient machine learning-based method to detect fake Twitter followers, demonstrating high accuracy and providing a publicly available dataset for further research.
Contribution
It introduces a new lightweight classifier using promising features, outperforming media-proposed rules and aiding in the detection of fake followers.
Findings
Most media-proposed rules perform poorly in detecting fake followers.
Past academic features yield good detection results.
The final classifier correctly classifies over 95% of accounts.
Abstract
are those Twitter accounts specifically created to inflate the number of followers of a target account. Fake followers are dangerous for the social platform and beyond, since they may alter concepts like popularity and influence in the Twittersphere - hence impacting on economy, politics, and society. In this paper, we contribute along different dimensions. First, we review some of the most relevant existing features and rules (proposed by Academia and Media) for anomalous Twitter accounts detection. Second, we create a baseline dataset of verified human and fake follower accounts. Such baseline dataset is publicly available to the scientific community. Then, we exploit the baseline dataset to train a set of machine-learning classifiers built over the reviewed rules and features. Our results show that most of the rules proposed by Media provide unsatisfactory…
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