WLFScience

← Home

Published on OCT 08 2024 by Filippo Menczer

How foreign operations are manipulating social media to influence your views

Russians, Chinese, Iranians – even Israelis – are trying to affect what you believe. Sean Gladwell/Moment via Getty Images

Filippo Menczer, Indiana University

Foreign influence campaigns, or information operations, have been widespread in the run-up to the 2024 U.S. presidential election. Influence campaigns are large-scale efforts to shift public opinion, push false narratives or change behaviors among a target population. Russia, China, Iran, Israel and other nations have run these campaigns by exploiting social bots, influencers, media companies and generative AI.

At the Indiana University Observatory on Social Media, my colleagues and I study influence campaigns and design technical solutions – algorithms – to detect and counter them. State-of-the-art methods developed in our center use several indicators of this type of online activity, which researchers call inauthentic coordinated behavior. We identify clusters of social media accounts that post in a synchronized fashion, amplify the same groups of users, share identical sets of links, images or hashtags, or perform suspiciously similar sequences of actions.

We have uncovered many examples of coordinated inauthentic behavior. For example, we found accounts that flood the network with tens or hundreds of thousands of posts in a single day. The same campaign can post a message with one account and then have other accounts that its organizers also control “like” and “unlike” it hundreds of times in a short time span. Once the campaign achieves its objective, all these messages can be deleted to evade detection. Using these tricks, foreign governments and their agents can manipulate social media algorithms that determine what is trending and what is engaging to decide what users see in their feeds.

Adversaries such as Russia, China and Iran aren’t the only foreign governments manipulating social media to influence U.S. politics.

Generative AI

One technique increasingly being used is creating and managing armies of fake accounts with generative artificial intelligence. We analyzed 1,420 fake Twitter – now X – accounts that used AI-generated faces for their profile pictures. These accounts were used to spread scams, disseminate spam and amplify coordinated messages, among other activities.

We estimate that at least 10,000 accounts like these were active daily on the platform, and that was before X CEO Elon Musk dramatically cut the platform’s trust and safety teams. We also identified a network of 1,140 bots that used ChatGPT to generate humanlike content to promote fake news websites and cryptocurrency scams.

In addition to posting machine-generated content, harmful comments and stolen images, these bots engaged with each other and with humans through replies and retweets. Current state-of-the-art large language model content detectors are unable to distinguish between AI-enabled social bots and human accounts in the wild.

Model misbehavior

The consequences of such operations are difficult to evaluate due to the challenges posed by collecting data and carrying out ethical experiments that would influence online communities. Therefore it is unclear, for example, whether online influence campaigns can sway election outcomes. Yet, it is vital to understand society’s vulnerability to different manipulation tactics.

In a recent paper, we introduced a social media model called SimSoM that simulates how information spreads through the social network. The model has the key ingredients of platforms such as Instagram, X, Threads, Bluesky and Mastodon: an empirical follower network, a feed algorithm, sharing and resharing mechanisms, and metrics for content quality, appeal and engagement.

SimSoM allows researchers to explore scenarios in which the network is manipulated by malicious agents who control inauthentic accounts. These bad actors aim to spread low-quality information, such as disinformation, conspiracy theories, malware or other harmful messages. We can estimate the effects of adversarial manipulation tactics by measuring the quality of information that targeted users are exposed to in the network.

We simulated scenarios to evaluate the effect of three manipulation tactics. First, infiltration: having fake accounts create believable interactions with human users in a target community, getting those users to follow them. Second, deception: having the fake accounts post engaging content, likely to be reshared by the target users. Bots can do this by, for example, leveraging emotional responses and political alignment. Third, flooding: posting high volumes of content.

Our model shows that infiltration is the most effective tactic, reducing the average quality of content in the system by more than 50%. Such harm can be further compounded by flooding the network with low-quality yet appealing content, thus reducing quality by 70%.

Curbing coordinated manipulation

We have observed all these tactics in the wild. Of particular concern is that generative AI models can make it much easier and cheaper for malicious agents to create and manage believable accounts. Further, they can use generative AI to interact nonstop with humans and create and post harmful but engaging content on a wide scale. All these capabilities are being used to infiltrate social media users’ networks and flood their feeds with deceptive posts.

These insights suggest that social media platforms should engage in more – not less – content moderation to identify and hinder manipulation campaigns and thereby increase their users’ resilience to the campaigns.

The platforms can do this by making it more difficult for malicious agents to create fake accounts and to post automatically. They can also challenge accounts that post at very high rates to prove that they are human. They can add friction in combination with educational efforts, such as nudging users to reshare accurate information. And they can educate users about their vulnerability to deceptive AI-generated content.

Open-source AI models and data make it possible for malicious agents to build their own generative AI tools. Regulation should therefore target AI content dissemination via social media platforms rather then AI content generation. For instance, before a large number of people can be exposed to some content, a platform could require its creator to prove its accuracy or provenance.

These types of content moderation would protect, rather than censor, free speech in the modern public squares. The right of free speech is not a right of exposure, and since people’s attention is limited, influence operations can be, in effect, a form of censorship by making authentic voices and opinions less visible.The Conversation

Filippo Menczer, Professor of Informatics and Computer Science, Indiana University

This article is republished from The Conversation under a Creative Commons license. Read the original article.

Written by Filippo Menczer

← Home
Tag
School

Related


2025-JAN-21 566   words
thumbnail
NVIDIA announces Ubuntu based Linux desktop

Author

James Smith


Publisher

WLFS

2025-JAN-21 567   words
thumbnail
Can you cut the cord on AI subscriptions? Not so fast

Author

James Smith


Publisher

WLFS

2024-OCT-21 743   words
thumbnail
Tracking vampire worms with machine learning

Authors

Trirupa Chakraborty, Jishnu Das, Aniruddh Sarkar


Publisher

The Conversation

2024-OCT-16 1032   words
thumbnail
Black Myth Wukong China’s gaming revolution fuels tech power

Authors

Shaoyu Yuan, Jun Xiang


Publisher

The Conversation

2024-OCT-09 1313   words
thumbnail
Machine learning cracked the protein-folding problem and won the 2024 Nobel Prize in chemistry

Author

Marc Zimmer


Publisher

The Conversation

2024-OCT-09 1045   words
thumbnail
How a subfield of physics led to breakthroughs in AI – and from there to this year’s Nobel Prize

Author

Veera Sundararaghavan


Publisher

The Conversation

2024-OCT-08 1171   words
thumbnail
Trump and Harris are sharply divided on science, but share common ground on US technology policy

Author

Kenneth Evans


Publisher

The Conversation

2024-OCT-08 1218   words
thumbnail
Nobel Prize in physics spotlights key breakthroughs in AI revolution − making machines that learn

Author

Ambuj Tewari


Publisher

The Conversation

2024-SEP-17 885   words
thumbnail
Tiny robots and AI algorithms could help to craft material solutions for cleaner environments

Author

Mahshid Ahmadi


Publisher

The Conversation

2024-SEP-11 1629   words
thumbnail
With China seeking AI dominance, Taiwan’s efforts to slow neighbor’s access to advanced chips needs support from the West

Authors

Min-Yen Chiang, Robert Muggah


Publisher

The Conversation

2023-MAR-30 651   words
thumbnail
This course uses science fiction to understand politics

Author

Nicole Pankiewicz


Publisher

The Conversation

2017-OCT-09 1203   words
thumbnail
Blade Runner’s problem with women remains unsolved in its sequel

Author

Stuart Richards


Publisher

The Conversation