TY - GEN
T1 - The Persuasive Power of Large Language Models
AU - Breum, Simon Martin
AU - Egdal, Daniel Vædele
AU - Gram Mortensen , Victor
AU - Møller, Anders Giovanni
AU - Aiello, Luca Maria
N1 - Breum SM, Egdal DV, Mortensen VG, Møller AG, Aiello LM. The persuasive power of large language models. InProceedings of the International AAAI Conference on Web and Social Media 2024 May 28 (Vol. 18, pp. 152-163).
PY - 2024/5
Y1 - 2024/5
N2 - The increasing capability of Large Language Models to act as human-like social agents raises two important questions in the area of opinion dynamics. First, whether these agents can generate effective arguments that could be injected into the online discourse to steer the public opinion. Second, whether artificial agents can interact with each other to reproduce dynamics of persuasion typical of human social systems, opening up opportunities for studying synthetic social systems as faithful proxies for opinion dynamics in human populations. To address these questions, we designed a synthetic persuasion dialogue scenario on the topic of climate change, where a 'convincer' agent generates a persuasive argument for a 'skeptic' agent, who subsequently assesses whether the argument changed its internal opinion state. Different types of arguments were generated to incorporate different linguistic dimensions underpinning psycho-linguistic theories of opinion change. We then asked human judges to evaluate the persuasiveness of machine-generated arguments. Arguments that included factual knowledge, markers of trust, expressions of support, and conveyed status were deemed most effective according to both humans and agents, with humans reporting a marked preference for knowledge-based arguments. Our experimental framework lays the groundwork for future in-silico studies of opinion dynamics, and our findings suggest that artificial agents have the potential of playing an important role in collective processes of opinion formation in online social media.
AB - The increasing capability of Large Language Models to act as human-like social agents raises two important questions in the area of opinion dynamics. First, whether these agents can generate effective arguments that could be injected into the online discourse to steer the public opinion. Second, whether artificial agents can interact with each other to reproduce dynamics of persuasion typical of human social systems, opening up opportunities for studying synthetic social systems as faithful proxies for opinion dynamics in human populations. To address these questions, we designed a synthetic persuasion dialogue scenario on the topic of climate change, where a 'convincer' agent generates a persuasive argument for a 'skeptic' agent, who subsequently assesses whether the argument changed its internal opinion state. Different types of arguments were generated to incorporate different linguistic dimensions underpinning psycho-linguistic theories of opinion change. We then asked human judges to evaluate the persuasiveness of machine-generated arguments. Arguments that included factual knowledge, markers of trust, expressions of support, and conveyed status were deemed most effective according to both humans and agents, with humans reporting a marked preference for knowledge-based arguments. Our experimental framework lays the groundwork for future in-silico studies of opinion dynamics, and our findings suggest that artificial agents have the potential of playing an important role in collective processes of opinion formation in online social media.
KW - Opinion dynamics
KW - Persuasion dialogue
KW - Large language models
KW - Synthetic social systems
KW - Climate change discourse
U2 - 10.1609/icwsm.v18i1.31304
DO - 10.1609/icwsm.v18i1.31304
M3 - Article in proceedings
VL - 18
SP - 152
EP - 163
BT - Proceedings of the International AAAI Conference on Web and Social Media
PB - AAAI Press
ER -