Robust Ideal Point Estimation with L0 Regularization
Analysis
Key Takeaways
- •Addresses the problem of protest voting in ideal point estimation.
- •Proposes an L0-regularized Item Response Theory model.
- •Demonstrates improved accuracy and speed compared to existing methods.
- •Provides a method for identifying protest votes.
- •Applies the method to the U.S. House of Representatives, correcting misclassifications.
“Our proposed method maintains estimation accuracy even with high proportions of protest votes, while being substantially faster than MCMC-based methods.”