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Psychological Steering in LLMs: An Evaluation of Effectiveness and Trustworthiness
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Psychological Steering in LLMs: An Evaluation of Effectiveness and Trustworthiness
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The ability to control LLMs' emulated emotional states and personality traits is an essential step in enabling rich, human-centered interactions in socially interactive settings. We introduce PsySET, a Psychologically-informed benchmark to evaluate LLM Steering Effectiveness and Trustworthiness across the emotion and personality domains. Our study spans four models from different LLM families paired with various steering strategies, including prompting, fine-tuning, and representation engineering. Our results indicate that prompting is consistently effective but limited in intensity control, whereas vector injections achieve finer controllability while slightly reducing output quality. Moreover, we explore the trustworthiness of steered LLMs by assessing safety, truthfulness, fairness, and ethics, highlighting potential side effects and behavioral shifts. Notably, we observe idiosyncratic effects; for instance, even a positive emotion like joy can degrade robustness to adversarial factuality, lower privacy awareness, and increase preferential bias. Meanwhile, anger predictably elevates toxicity yet strengthens leakage resistance. Our framework establishes the first holistic evaluation of emotion and personality steering, offering insights into its interpretability and reliability for socially interactive applications.
Forward citations
Cited by 3 Pith papers
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Tracing Moral Foundations in Large Language Models
Moral foundations in LLMs form distributed, layered representations that align with human perceptions, emerge from pretraining, and causally influence outputs when steered via dense vectors or sparse features.
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Tracing Moral Foundations in Large Language Models
LLMs encode moral foundations in human-aligned, layered representations that arise from pretraining and can be steered via dense vectors or sparse SAE features.
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Locate, Steer, and Improve: A Practical Survey of Actionable Mechanistic Interpretability in Large Language Models
The survey organizes mechanistic interpretability techniques into a Locate-Steer-Improve framework to enable actionable improvements in LLM alignment, capability, and efficiency.
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