Multi-Session Chat(MSC) Dataset
The authors provided annotated summary of each session and summarizer trained with the summaries.
In GPT agent-based experiments, repeated interactions consistently lead to belief convergence and diversity (entropy) reduction. Additionally, using Bayesian updates and trust matrices, researchers prove that when mutual trust exceeds a certain threshold, groups become overly confident in factually incorrect beliefs. In other words, the mutual feedback loop between humans and Large Language Models (LLMs) can reduce the diversity of user beliefs and lock in incorrect beliefs.
Multi turn conversation is the weak joint