Beyond Sociodemographic Prompting: Using Supervision to Align LLMs with Human Response Distributions
Beyond Sociodemographic Prompting: Using Supervision to Align LLMs with Human Response Distributions
The ability to accurately predict how different population groups would answer subjective questions would have great value. In this work, we show that use of relatively simple supervision can greatly improve language model alignment with diverse population groups, as measured over three datasets spanning various topics. Beyond evaluating average performance, we also report how alignment varies across specific groups. The simplicity and generality of our approach promotes easy adoption, while our broad findings provide useful guidance for when to use or not use our approach in practice. By conducting evaluation over many LLMs and prompting strategies, along with open-sourcing our work, we provide a useful benchmark to stimulate future research.
Gauri Kambhatla、Sanjana Gautam、Angela Zhang、Alex Liu、Ravi Srinivasan、Junyi Jessy Li、Matthew Lease
计算技术、计算机技术
Gauri Kambhatla,Sanjana Gautam,Angela Zhang,Alex Liu,Ravi Srinivasan,Junyi Jessy Li,Matthew Lease.Beyond Sociodemographic Prompting: Using Supervision to Align LLMs with Human Response Distributions[EB/OL].(2025-07-01)[2025-07-16].https://arxiv.org/abs/2507.00439.点此复制
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