William Isaac


2024

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STAR: SocioTechnical Approach to Red Teaming Language Models
Laura Weidinger | John F J Mellor | Bernat Guillén Pegueroles | Nahema Marchal | Ravin Kumar | Kristian Lum | Canfer Akbulut | Mark Diaz | A. Stevie Bergman | Mikel D. Rodriguez | Verena Rieser | William Isaac
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing

This research introduces STAR, a sociotechnical framework that improves on current best practices for red teaming safety of large language models. STAR makes two key contributions: it enhances steerability by generating parameterised instructions for human red teamers, leading to improved coverage of the risk surface. Parameterised instructions also provide more detailed insights into model failures at no increased cost. Second, STAR improves signal quality by matching demographics to assess harms for specific groups, resulting in more sensitive annotations. STAR further employs a novel step of arbitration to leverage diverse viewpoints and improve label reliability, treating disagreement not as noise but as a valuable contribution to signal quality.