Can Language Models Recognize Convincing Arguments?
- URL: http://arxiv.org/abs/2404.00750v2
- Date: Thu, 03 Oct 2024 21:01:45 GMT
- Title: Can Language Models Recognize Convincing Arguments?
- Authors: Paula Rescala, Manoel Horta Ribeiro, Tiancheng Hu, Robert West,
- Abstract summary: Large language models (LLMs) have raised concerns about their potential to create and propagate convincing narratives.
We study their performance in detecting convincing arguments to gain insights into their persuasive capabilities.
- Score: 12.458437450959416
- License:
- Abstract: The capabilities of large language models (LLMs) have raised concerns about their potential to create and propagate convincing narratives. Here, we study their performance in detecting convincing arguments to gain insights into LLMs' persuasive capabilities without directly engaging in experimentation with humans. We extend a dataset by Durmus and Cardie (2018) with debates, votes, and user traits and propose tasks measuring LLMs' ability to (1) distinguish between strong and weak arguments, (2) predict stances based on beliefs and demographic characteristics, and (3) determine the appeal of an argument to an individual based on their traits. We show that LLMs perform on par with humans in these tasks and that combining predictions from different LLMs yields significant performance gains, surpassing human performance. The data and code released with this paper contribute to the crucial effort of continuously evaluating and monitoring LLMs' capabilities and potential impact. (https://go.epfl.ch/persuasion-llm)
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