Tech

Social networks are vulnerable to relatively simple AI manipulation and polarization

Share
Share
social network
Credit: Pixabay/CC0 Public Domain

It seems that no matter the topic of conversation, online opinion around it will be split into two seemingly irreconcilable camps.

That’s largely a result of social network platforms’ design, as the algorithms driving them direct users to like-minded peers. This creates online communities that very easily become echo chambers, exacerbating polarization.

The platforms’ own vulnerabilities to outside manipulation make them tempting targets for malicious actors who hope to sow discord and unsettle societies.

A recent paper by Concordia researchers published in the journal IEEE Xplore describes a new method of making this easier. The approach uses reinforcement learning to determine which hacked user’s social media account is best placed to maximize online polarization with the least amount of guidance.

“We used systems theory to model opinion dynamics from psychology that have been developed over the past 20 years,” says Rastko Selmic, a professor in the Department of Electrical and Computer Engineering at the Gina Cody School of Engineering and Computer Science and a co-author of the paper.

“The novelty comes in using these models for large groups of people and applying artificial intelligence (AI) to decide where to position bots—these automated adversarial agents—and developing the optimization method.”

The paper’s lead author, Ph.D. candidate Mohamed Zareer, explains that the goal of this research is to improve the detection mechanisms and highlight vulnerabilities in social media networks.

A little data can do a lot of harm

The researchers used data from roughly four million accounts on the social media network Twitter (now X) that had been identified as having opinions on the topic of vaccines and vaccination.

They created adversarial agents that used a technique called Double Deep Q-Learning. This reinforcement-learning approach allows bots to perform complex, rewards-based tasks in complex environments like a social media network with relatively little oversight by human programmers.

“We designed our research to be simple and to have as much impact as possible,” Zareer says.

In their model, the adversarial agents would only have two pieces of information: the current opinions of the account owner and the number of followers. The researchers applied their algorithm to three probabilistic models that ran them through synthetic networks of 20 agents, which they say makes the results representative and generalizable.

These and other experiments mimic actual threats like bots or coordinated disinformation campaigns. They confirm the effectiveness in intensifying polarization and creating disagreements across social networks.

The researchers hope their work will influence policymakers and platform owners to develop new safeguards against malicious manipulation by malicious agents and promote transparency and ethical AI usage.

More information:
Mohamed N. Zareer et al, Maximizing Disagreement and Polarization in Social Media Networks using Double Deep Q-Learning, 2024 IEEE International Conference on Systems, Man, and Cybernetics (SMC) (2025). DOI: 10.1109/SMC54092.2024.10831299

Provided by
Concordia University


Citation:
Social networks are vulnerable to relatively simple AI manipulation and polarization (2025, April 15)
retrieved 15 April 2025
from

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.

Share

Leave a comment

Leave a Reply

Your email address will not be published. Required fields are marked *

Related Articles
Chatbots are on the rise, but customers still trust human agents more
Tech

Chatbots are on the rise, but customers still trust human agents more

Credit: CC0 Public Domain Customers contact companies regularly to purchase products and...

XO, Kitty season 3: everything we know so far about the hit show’s return to Netflix
Tech

XO, Kitty season 3: everything we know so far about the hit show’s return to Netflix

XO, Kitty season 3: key information – Officially renewed in February– Filming...

This monster 30TB hard drive costs less than 0 and is built for nonstop data hoarding
Tech

This monster 30TB hard drive costs less than $620 and is built for nonstop data hoarding

Seagate’s 30TB Exos M is helium-filled and built for data centers, not...

New technique hides encryption keys under user data using standard 3D NAND flash memory
Tech

New technique hides encryption keys under user data using standard 3D NAND flash memory

Flash memory now doubles as secure key storage using conceal-and-reveal method Encryption...