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Toward a digital twin of U.S. Congress

Toward a digital twin of U.S. Congress

来源:Arxiv_logoArxiv
英文摘要

In this paper we provide evidence that a virtual model of U.S. congresspersons based on a collection of language models satisfies the definition of a digital twin. In particular, we introduce and provide high-level descriptions of a daily-updated dataset that contains every Tweet from every U.S. congressperson during their respective terms. We demonstrate that a modern language model equipped with congressperson-specific subsets of this data are capable of producing Tweets that are largely indistinguishable from actual Tweets posted by their physical counterparts. We illustrate how generated Tweets can be used to predict roll-call vote behaviors and to quantify the likelihood of congresspersons crossing party lines, thereby assisting stakeholders in allocating resources and potentially impacting real-world legislative dynamics. We conclude with a discussion of the limitations and important extensions of our analysis.

Hayden Helm、Tianyi Chen、Carey E. Priebe、Brandon Duderstadt、Harvey McGuinness、Paige Lee

计算技术、计算机技术

Hayden Helm,Tianyi Chen,Carey E. Priebe,Brandon Duderstadt,Harvey McGuinness,Paige Lee.Toward a digital twin of U.S. Congress[EB/OL].(2025-04-04)[2025-06-06].https://arxiv.org/abs/2505.00006.点此复制

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