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Main Authors: Tosato, Tommaso, Helbling, Saskia, Mantilla-Ramos, Yorguin-Jose, Hegazy, Mahmood, Tosato, Alberto, Lemay, David John, Rish, Irina, Dumas, Guillaume
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.04826
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author Tosato, Tommaso
Helbling, Saskia
Mantilla-Ramos, Yorguin-Jose
Hegazy, Mahmood
Tosato, Alberto
Lemay, David John
Rish, Irina
Dumas, Guillaume
author_facet Tosato, Tommaso
Helbling, Saskia
Mantilla-Ramos, Yorguin-Jose
Hegazy, Mahmood
Tosato, Alberto
Lemay, David John
Rish, Irina
Dumas, Guillaume
contents Large language models require consistent behavioral patterns for safe deployment, yet there are indications of large variability that may lead to an instable expression of personality traits in these models. We present PERSIST (PERsonality Stability in Synthetic Text), a comprehensive evaluation framework testing 25 open-source models (1B-685B parameters) across 2 million+ responses. Using traditional (BFI, SD3) and novel LLM-adapted personality questionnaires, we systematically vary model size, personas, reasoning modes, question order or paraphrasing, and conversation history. Our findings challenge fundamental assumptions: (1) Question reordering alone can introduce large shifts in personality measurements; (2) Scaling provides limited stability gains: even 400B+ models exhibit standard deviations >0.3 on 5-point scales; (3) Interventions expected to stabilize behavior, such as reasoning and inclusion of conversation history, can paradoxically increase variability; (4) Detailed persona instructions produce mixed effects, with misaligned personas showing significantly higher variability than the helpful assistant baseline; (5) The LLM-adapted questionnaires, despite their improved ecological validity, exhibit instability comparable to human-centric versions. This persistent instability across scales and mitigation strategies suggests that current LLMs lack the architectural foundations for genuine behavioral consistency. For safety-critical applications requiring predictable behavior, these findings indicate that current alignment strategies may be inadequate.
format Preprint
id arxiv_https___arxiv_org_abs_2508_04826
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Persistent Instability in LLM's Personality Measurements: Effects of Scale, Reasoning, and Conversation History
Tosato, Tommaso
Helbling, Saskia
Mantilla-Ramos, Yorguin-Jose
Hegazy, Mahmood
Tosato, Alberto
Lemay, David John
Rish, Irina
Dumas, Guillaume
Computation and Language
Artificial Intelligence
Large language models require consistent behavioral patterns for safe deployment, yet there are indications of large variability that may lead to an instable expression of personality traits in these models. We present PERSIST (PERsonality Stability in Synthetic Text), a comprehensive evaluation framework testing 25 open-source models (1B-685B parameters) across 2 million+ responses. Using traditional (BFI, SD3) and novel LLM-adapted personality questionnaires, we systematically vary model size, personas, reasoning modes, question order or paraphrasing, and conversation history. Our findings challenge fundamental assumptions: (1) Question reordering alone can introduce large shifts in personality measurements; (2) Scaling provides limited stability gains: even 400B+ models exhibit standard deviations >0.3 on 5-point scales; (3) Interventions expected to stabilize behavior, such as reasoning and inclusion of conversation history, can paradoxically increase variability; (4) Detailed persona instructions produce mixed effects, with misaligned personas showing significantly higher variability than the helpful assistant baseline; (5) The LLM-adapted questionnaires, despite their improved ecological validity, exhibit instability comparable to human-centric versions. This persistent instability across scales and mitigation strategies suggests that current LLMs lack the architectural foundations for genuine behavioral consistency. For safety-critical applications requiring predictable behavior, these findings indicate that current alignment strategies may be inadequate.
title Persistent Instability in LLM's Personality Measurements: Effects of Scale, Reasoning, and Conversation History
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2508.04826