Can Generative Agents Predict Emotion?
Ciaran Regan, Nanami Iwahashi, Shogo Tanaka, Mizuki Oka

TL;DR
This paper proposes a novel architecture for generative language model agents that perceives new experiences, compares them with past memories, and updates their emotional state accordingly, aiming to improve emotional alignment.
Contribution
The paper introduces a memory comparison-based architecture for LLM agents to model emotional state evolution through experience perception and context analysis.
Findings
Contextual comparison can improve emotional alignment in some cases
The approach demonstrates the potential for emotion modeling in LLMs
Further validation with human evaluators is needed
Abstract
Large Language Models (LLMs) have demonstrated a number of human-like abilities, however the empathic understanding and emotional state of LLMs is yet to be aligned to that of humans. In this work, we investigate how the emotional state of generative LLM agents evolves as they perceive new events, introducing a novel architecture in which new experiences are compared to past memories. Through this comparison, the agent gains the ability to understand new experiences in context, which according to the appraisal theory of emotion is vital in emotion creation. First, the agent perceives new experiences as time series text data. After perceiving each new input, the agent generates a summary of past relevant memories, referred to as the norm, and compares the new experience to this norm. Through this comparison we can analyse how the agent reacts to the new experience in context. The PANAS,…
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Taxonomy
TopicsLanguage and cultural evolution
