Social Media Identity Deception Detection: A Survey release_vosxch6ujbfftfbxc5wzdolft4

by Ahmed Alharbi, Hai Dong, Xun Yi, Zahir Tari, Ibrahim Khalil

Released as a article .

2021  

Abstract

Social media have been growing rapidly and become essential elements of many people's lives. Meanwhile, social media have also come to be a popular source for identity deception. Many social media identity deception cases have arisen over the past few years. Recent studies have been conducted to prevent and detect identity deception. This survey analyses various identity deception attacks, which can be categorized into fake profile, identity theft and identity cloning. This survey provides a detailed review of social media identity deception detection techniques. It also identifies primary research challenges and issues in the existing detection techniques. This article is expected to benefit both researchers and social media providers.
In text/plain format

Archived Content

There are no accessible files associated with this release. You could check other releases for this work for an accessible version.

"Dark" Preservation Only
Save Paper Now!

Know of a fulltext copy of on the public web? Submit a URL and we will archive it

Type  article
Stage   accepted
Date   2021-04-22
Version   v2
Language   en ?
arXiv  2103.04673v2
Work Entity
access all versions, variants, and formats of this works (eg, pre-prints)
Catalog Record
Revision: 68052865-1a62-44fb-ab41-a12755958b6e
API URL: JSON