Search:
Match:
2 results

Analysis

This paper addresses a critical problem in political science: the distortion of ideal point estimation caused by protest voting. It proposes a novel method using L0 regularization to mitigate this bias, offering a faster and more accurate alternative to existing methods, especially in the presence of strategic voting. The application to the U.S. House of Representatives demonstrates the practical impact of the method by correctly identifying the ideological positions of legislators who engage in protest voting, which is a significant contribution.
Reference

Our proposed method maintains estimation accuracy even with high proportions of protest votes, while being substantially faster than MCMC-based methods.

Research#Bayesian Inference🔬 ResearchAnalyzed: Jan 10, 2026 09:07

Calibrating Bayesian Domain Inference for Proportions

Published:Dec 20, 2025 19:41
1 min read
ArXiv

Analysis

This ArXiv article likely presents a novel method for improving the accuracy and reliability of Bayesian inference within specific domains, focusing on proportional data. The research suggests a refined approach to model calibration, potentially leading to more robust statistical conclusions in relevant applications.
Reference

The article focuses on calibrating hierarchical Bayesian domain inference for a proportion.