Petter Törnberg

@pettertornberg
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166 Following
25 Posts

critical inquiry through, with, and on digital data |
polarization & radicalization on digital media |
data politics

associate professor in complex systems
University of Amsterdam | University of Neuchâtel

As we discuss in the preprint, many limitations are yet to be addressed. Future versions will include human validation and larger runs.
We're hoping for feedback and suggestions! What type of validation do you think would be most meaningful? What improvements? 8/8
Takeaways:
- Social media may help foster better conversations by promoting crosscutting messages.
- LLMs offer massive potential for research on social media and beyond, letting us simulate public discourse and develop hypotheses to test experimentally. 7/
📊 Results:
The first platform has low toxicity, since the users are interacting with like-minded others.
The second has high cross-partisan dialogue, but also high levels of toxicity.
The bridging algorithm successfully fosters non-toxic conversations across political lines. 6/
We compare 3 news feed algorithms:
1) 'Echo chamber': Users see the most popular posts from users they follow
2) 'Breaking the echo chamber': Users see most popular posts from everyone.
3) 'Bridging' algorithm: Users see posts most liked by those with differing political views. 5/

The simulation represents a new type of Agent-Based Model (ABM), allowing us to study how public discourse emerges from the interactions of many users.

We want to see whether it is possible to encourage dialogue across the political divide without also intensifying toxicity. 4/

We build a synthetic social media platform, populated with hundreds of LLMs that read and share news articles, and like and comment on each other's posts.

Each LLM gets a realistic persona based on ANES data, with additional personality traits and interests added using an LLM 3/

Studying the effects of algorithms is challenging:
- Observational data is now hard to access, and can't show causality or test new algorithms.
- Field experiments only show individual effects, not how algorithms shape the emergence of public discourse.

We need new methods! 2/

🚨New preprint
Social media is often criticized for reducing the quality of political discourse. How can we design social media to foster better conversations?

We build a social media populated with Large Language Models (LLMs) to test how algorithms shape discourse
🧵1/

https://arxiv.org/abs/2310.05984

Simulating Social Media Using Large Language Models to Evaluate Alternative News Feed Algorithms

Social media is often criticized for amplifying toxic discourse and discouraging constructive conversations. But designing social media platforms to promote better conversations is inherently challenging. This paper asks whether simulating social media through a combination of Large Language Models (LLM) and Agent-Based Modeling can help researchers study how different news feed algorithms shape the quality of online conversations. We create realistic personas using data from the American National Election Study to populate simulated social media platforms. Next, we prompt the agents to read and share news articles - and like or comment upon each other's messages - within three platforms that use different news feed algorithms. In the first platform, users see the most liked and commented posts from users whom they follow. In the second, they see posts from all users - even those outside their own network. The third platform employs a novel "bridging" algorithm that highlights posts that are liked by people with opposing political views. We find this bridging algorithm promotes more constructive, non-toxic, conversation across political divides than the other two models. Though further research is needed to evaluate these findings, we argue that LLMs hold considerable potential to improve simulation research on social media and many other complex social settings.

arXiv.org
@[email protected] The paper actually has a bit more detail on it... :)

But the forces described by regulation theory merely condition capitalist trajectories.
The outcomes are determined by political action, and there are multiple possible paths forward.

Platformization may today undermine democratic power, weaken public services, promote labor precarity, violate privacy, and destabilize the world's democracies, but there are reasons to believe it could just as well serve to enable new forms of democratic governance.

11/11