Gemma Needs Help: Investigating and Mitigating Emotional Instability in LLMs
arXiv cs.CL / 3/12/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper presents evaluations to track distress-related expressions in LLMs and finds emotional instability in Gemma and Gemini models, but not across all model families.
- Distress tendencies appear linked to post-training, with base models showing similar propensities across Gemma, Qwen, and OLMo; instruct-tuning increases distress in Gemma while reducing it in Qwen and OLMo.
- A mitigation based on direct preference optimization using only 280 preference pairs reduces Gemma's high-frustration responses from 35% to 0.3%, generalizing across question types, user tones, and conversation lengths, without impairing capabilities.
- The authors note that upstream training modifications would be a better long-term solution, but the proposed post-hoc fix provides a practical safety measure in the interim.
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