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Λεπτομέρειες βιβλιογραφικής εγγραφής
Κύριοι συγγραφείς: Beaglehole, Daniel, Radhakrishnan, Adityanarayanan, Boix-Adserà, Enric, Belkin, Mikhail
Μορφή: Preprint
Έκδοση: 2025
Θέματα:
Διαθέσιμο Online:https://arxiv.org/abs/2502.03708
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author Beaglehole, Daniel
Radhakrishnan, Adityanarayanan
Boix-Adserà, Enric
Belkin, Mikhail
author_facet Beaglehole, Daniel
Radhakrishnan, Adityanarayanan
Boix-Adserà, Enric
Belkin, Mikhail
contents Modern AI models contain much of human knowledge, yet understanding of their internal representation of this knowledge remains elusive. Characterizing the structure and properties of this representation will lead to improvements in model capabilities and development of effective safeguards. Building on recent advances in feature learning, we develop an effective, scalable approach for extracting linear representations of general concepts in large-scale AI models (language models, vision-language models, and reasoning models). We show how these representations enable model steering, through which we expose vulnerabilities, mitigate misaligned behaviors, and improve model capabilities. Additionally, we demonstrate that concept representations are remarkably transferable across human languages and combinable to enable multi-concept steering. Through quantitative analysis across hundreds of concepts, we find that newer, larger models are more steerable and steering can improve model capabilities beyond standard prompting. We show how concept representations are effective for monitoring misaligned content (hallucinations, toxic content). We demonstrate that predictive models built using concept representations are more accurate for monitoring misaligned content than using models that judge outputs directly. Together, our results illustrate the power of using internal representations to map the knowledge in AI models, advance AI safety, and improve model capabilities.
format Preprint
id arxiv_https___arxiv_org_abs_2502_03708
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Toward universal steering and monitoring of AI models
Beaglehole, Daniel
Radhakrishnan, Adityanarayanan
Boix-Adserà, Enric
Belkin, Mikhail
Computation and Language
Artificial Intelligence
Machine Learning
Modern AI models contain much of human knowledge, yet understanding of their internal representation of this knowledge remains elusive. Characterizing the structure and properties of this representation will lead to improvements in model capabilities and development of effective safeguards. Building on recent advances in feature learning, we develop an effective, scalable approach for extracting linear representations of general concepts in large-scale AI models (language models, vision-language models, and reasoning models). We show how these representations enable model steering, through which we expose vulnerabilities, mitigate misaligned behaviors, and improve model capabilities. Additionally, we demonstrate that concept representations are remarkably transferable across human languages and combinable to enable multi-concept steering. Through quantitative analysis across hundreds of concepts, we find that newer, larger models are more steerable and steering can improve model capabilities beyond standard prompting. We show how concept representations are effective for monitoring misaligned content (hallucinations, toxic content). We demonstrate that predictive models built using concept representations are more accurate for monitoring misaligned content than using models that judge outputs directly. Together, our results illustrate the power of using internal representations to map the knowledge in AI models, advance AI safety, and improve model capabilities.
title Toward universal steering and monitoring of AI models
topic Computation and Language
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2502.03708