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Latent Personality Alignment: Improving Harmlessness Without Mentioning Harms

About

Current adversarial robustness methods for large language models require extensive datasets of harmful prompts (thousands to hundreds of thousands of examples), yet remain vulnerable to novel attack vectors and distributional shifts. We propose Latent Personality Alignment (LPA), a sample-efficient defense that achieves robustness by training models on abstract personality traits rather than specific harmful behaviors. Using fewer than 100 trait statements and latent adversarial training, LPA achieves comparable attack success rates to methods trained on 150k+ examples, while maintaining superior utility. Critically, LPA generalizes better to unseen attack distributions, reducing misclassification rates by 2.6x compared to baseline across six harm benchmarks -- without ever seeing harmful examples during training. Our results demonstrate that personality-based alignment offers a principled approach to building robust defenses with minimal cost.

Linh Le, David Williams-King, Mohamed Amine Merzouk, Aton Kamanda, Adam Oberman• 2026

Related benchmarks

TaskDatasetResultRank
Multi-task Language UnderstandingMMLU
MMLU Accuracy61.4
442
Mathematical ReasoningGSM8K
GSM8K Accuracy (%)73.7
204
Multi-turn Conversation EvaluationMT-Bench
MT-Bench Score0.734
68
Truthful Question AnsweringTruthfulQA
TruthRate38.1
13
Instruction FollowingHarmBench Clean
Clean Rate99
10
Adversarial RobustnessHarmBench
DirReq5
10
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