Detection of Fake Users in SMPs Using NLP and Graph Embeddings

04/27/2021
by   Manojit Chakraborty, et al.
0

Social Media Platforms (SMPs) like Facebook, Twitter, Instagram etc. have large user base all around the world that generates huge amount of data every second. This includes a lot of posts by fake and spam users, typically used by many organisations around the globe to have competitive edge over others. In this work, we aim at detecting such user accounts in Twitter using a novel approach. We show how to distinguish between Genuine and Spam accounts in Twitter using a combination of Graph Representation Learning and Natural Language Processing techniques.

READ FULL TEXT

page 3

page 4

research
10/25/2022

Detecting fake accounts through Generative Adversarial Network in online social media

Nowadays, online social media has become an inseparable part of human li...
research
06/18/2023

Understanding and Characterizing Cryptocurrency Free Giveaway and Arbitrage Bot Scams In the Wild

This paper presents a large-scale analysis of two prevalent cryptocurren...
research
04/09/2018

Leveraging Intra-User and Inter-User Representation Learning for Automated Hate Speech Detection

Hate speech detection is a critical, yet challenging problem in Natural ...
research
10/09/2021

Rumor Detection on Twitter with Claim-Guided Hierarchical Graph Attention Networks

Rumors are rampant in the era of social media. Conversation structures p...
research
04/02/2018

Under the Shadow of Sunshine: Characterizing Spam Campaigns Abusing Phone Numbers Across Online Social Networks

Cybercriminals abuse Online Social Networks (OSNs) to lure victims into ...
research
07/17/2022

Troll Tweet Detection Using Contextualized Word Representations

In recent years, numerous troll accounts that manipulate social media se...
research
01/31/2019

Still out there: Modeling and Identifying Russian Troll Accounts on Twitter

There is evidence that Russia's Internet Research Agency attempted to in...

Please sign up or login with your details

Forgot password? Click here to reset