Back to Search Start Over

Generative Social Choice

Authors :
Fish, Sara
Gölz, Paul
Parkes, David C.
Procaccia, Ariel D.
Rusak, Gili
Shapira, Itai
Wüthrich, Manuel
Publication Year :
2023

Abstract

Traditionally, social choice theory has only been applicable to choices among a few predetermined alternatives but not to more complex decisions such as collectively selecting a textual statement. We introduce generative social choice, a framework that combines the mathematical rigor of social choice theory with large language models' capability to generate text and extrapolate preferences. This framework divides the design of AI-augmented democratic processes into two components: first, proving that the process satisfies rigorous representation guarantees when given access to oracle queries; second, empirically validating that these queries can be approximately implemented using a large language model. We illustrate this framework by applying it to the problem of generating a slate of statements that is representative of opinions expressed as free-form text, for instance in an online deliberative process.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.01291
Document Type :
Working Paper