Text-Based Ideal Points for the U.S. Congress
TBIP provides researchers with a novel measure of ideology based on texts.
About
TBIP are a novel measure of ideology via text-based ideal points that infer ideological positions based on text alone. The model extends prior work by Vafa et al. (2020) and earlier iterations of Gaynor et al. (2026), which utilizes Latent Dirichlet Allocation (LDA) via Gibbs sampling to generate outputs based on topic-word distribution (β) and document topic distributions (θ). The resulting ideal points capture not only the topics legislators engage with, but also the ideological framing and word choices used when discussing those topics. As a result, ideal points are determined jointly by topic engagement and topic-specific word polarity, allowing the model to estimate stable ideological positions without relying on party labels or other external ideological indicators.
Data
Datasets available for download. Browse datasets.
Papers
Working papers and publications. Browse papers.
Visuals
Interactive visualizations. Browse visuals.
Research team
Principal investigators
SoRelle W. Gaynor, University of Virginia
Pranav Goel, Northeastern University
Research assistants
Samuel Du, University of Virginia (graduate)
Lakshay Kansal, University of Virginia
Musayab Razaq, University of Virginia