Dynamic Personality Adaptation in Large Language Models via State MachinesOpen Access

Pielage, Leon; Hätscher, Ole; Back, Mitja; Marschall, Bernhard; Risse, Benjamin

Forschungsartikel in Online-Sammlung | Preprint

Zusammenfassung

The inability of Large Language Models (LLMs) to modulate their personality expression in response to evolving dialogue dynamics hinders their performance in complex, interactive contexts. We propose a model-agnostic framework for dynamic personality simulation that employs state machines to represent latent personality states, where transition probabilities are dynamically adapted to the conversational context. Part of our architecture is a modular pipeline for continuous personality scoring that evaluates dialogues along latent axes while remaining agnostic to the specific personality models, their dimensions, transition mechanisms, or LLMs used. These scores function as dynamic state variables that systematically reconfigure the system prompt, steering behavioral alignment throughout the interaction. We evaluate this framework by operationalizing the Interpersonal Circumplex (IPC) in a medical education setting. Results demonstrate that the system successfully adapts its personality state to user inputs, but also influences user behavior, thereby facilitating de-escalation training. Notably, the scoring pipeline maintains comparable precision even when utilizing lightweight, fine-tuned classifiers instead of large-scale LLMs. This work demonstrates the feasibility of modular, personality-adaptive architectures for education, customer support, and broader human-computer interaction.

Details zur Publikation

Name des RepositoriumsarXiv
ArtikelnummerarXiv:2602.22157
Versionv1
StatusVeröffentlicht
Veröffentlichungsjahr2026 (25.02.2026)
Sprache, in der die Publikation verfasst istEnglisch
StichwörterLLM; affective computing; personality; HCI; IPC

Autor*innen der Universität Münster

Back, Mitja
Hätscher, Jan Ole
Marschall, Bernhard
Pielage, Leon
Risse, Benjamin