Identifying Fake Profiles in LinkedIn
Shalinda Adikari, Kaushik Dutta

TL;DR
This paper presents a data mining approach to identify fake LinkedIn profiles using minimal publicly available data, achieving high accuracy and outperforming similar existing methods.
Contribution
The study introduces a novel minimal-data profile analysis method for fake profile detection on LinkedIn, with improved accuracy over comparable approaches.
Findings
87% accuracy in fake profile identification
94% True Negative Rate
14% accuracy improvement over similar methods
Abstract
As organizations increasingly rely on professionally oriented networks such as LinkedIn (the largest such social network) for building business connections, there is increasing value in having one's profile noticed within the network. As this value increases, so does the temptation to misuse the network for unethical purposes. Fake profiles have an adverse effect on the trustworthiness of the network as a whole, and can represent significant costs in time and effort in building a connection based on fake information. Unfortunately, fake profiles are difficult to identify. Approaches have been proposed for some social networks; however, these generally rely on data that are not publicly available for LinkedIn profiles. In this research, we identify the minimal set of profile data necessary for identifying fake profiles in LinkedIn, and propose an appropriate data mining approach for fake…
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Taxonomy
TopicsSpam and Phishing Detection · Internet Traffic Analysis and Secure E-voting · Advanced Malware Detection Techniques
