scholarly journals Multiple Ideal Points: Revealed Preferences in Different Domains

2021 ◽  
Vol 29 (2) ◽  
pp. 139-166 ◽  
Author(s):  
Scott Moser ◽  
Abel Rodríguez ◽  
Chelsea L. Lofland

AbstractWe extend classical ideal point estimation to allow voters to have different preferences when voting in different domains—for example, when voting on agricultural policy than when voting on defense policy. Our scaling procedure results in estimated ideal points on a common scale. As a result, we are able to directly compare a member’s revealed preferences across different domains of voting (different sets of motions) to assess if, for example, a member votes more conservatively on agriculture motions than on defense. In doing so, we are able to assess the extent to which voting behavior of an individual voter is consistent with a uni-dimensional spatial model—if a member has the same preferences in all domains. The key novelty is to estimate rather than assume the identity of “stayers”—voters whose revealed preference is constant across votes. Our approach offers methodology for investigating the relationship between the basic space and issue space in legislative voting (Poole 2007). There are several methodological advantages to our approach. First, our model allows for testing sharp hypotheses. Second, the methodology developed can be understood as a kind of partial-pooling model for item response theory scaling, resulting in less uncertainty of estimates. Related, our estimation method provides a principled and unified approach to the issue of “granularity” (i.e., the level of aggregation) in the analysis of roll-call data (Crespin and Rohde 2010; Roberts et al. 2016). We illustrate the model by estimating U.S. House of Representatives members’ revealed preferences in different policy domains, and identify several other potential applications of the model including: studying the relationship between committee and floor voting behavior; and investigating constituency influence and representation.

2018 ◽  
Vol 26 (2) ◽  
pp. 131-146 ◽  
Author(s):  
Alexander Tahk

Existing approaches to estimating ideal points offer no method for consistent estimation or inference without relying on strong parametric assumptions. In this paper, I introduce a nonparametric approach to ideal-point estimation and inference that goes beyond these limitations. I show that some inferences about the relative positions of two pairs of legislators can be made with minimal assumptions. This information can be combined across different possible choices of the pairs to provide estimates and perform hypothesis tests for all legislators without additional assumptions. I demonstrate the usefulness of these methods in two applications to Supreme Court data, one testing for ideological movement by a single justice and the other testing for multidimensional voting behavior in different decades.


2010 ◽  
Vol 18 (2) ◽  
pp. 151-171 ◽  
Author(s):  
Benjamin E. Lauderdale

Ideal point estimators are typically based on an assumption that all legislators are equally responsive to modeled dimensions of legislative disagreement; however, particularistic constituency interests and idiosyncrasies of individual legislators introduce variation in the degree to which legislators cast votes predictably. I introduce a Bayesian heteroskedastic ideal point estimator and demonstrate by Monte Carlo simulation that it outperforms standard homoskedastic estimators at recovering the relative positions of legislators. In addition to providing a refinement of ideal point estimates, the heteroskedastic estimator recovers legislator-specific error variance parameters that describe the extent to which each legislator's voting behavior is not conditioned on the primary axes of disagreement in the legislature. Through applications to the roll call histories of the U.S. Congress, the E.U. Parliament, and the U.N. General Assembly, I demonstrate how to use the heteroskedastic estimator to study substantive questions related to legislative incentives for low-dimensional voting behavior as well as diagnose unmodeled dimensions and nonconstant ideal points.


Author(s):  
Sylvester Eijffinger ◽  
Ronald Mahieu ◽  
Louis Raes

In this chapter we suggest to use Bayesian ideal point estimation to analyze voting in monetary policy committees. Using data from the Riksbank we demonstrate what this entails and we compare ideal point estimates with the results from traditional approaches. We end by suggesting possible extensions.


2021 ◽  
Vol 26 (2) ◽  
pp. 37
Author(s):  
Noah Giansiracusa

The voting patterns of the nine justices on the United States Supreme Court continue to fascinate and perplex observers of the Court. While it is commonly understood that the division of the justices into a liberal branch and a conservative branch inevitably drives many case outcomes, there are finer, less transparent divisions within these two main branches that have proven difficult to extract empirically. This study imports methods from evolutionary biology to help illuminate the intricate and often overlooked branching structure of the justices’ voting behavior. Specifically, phylogenetic tree estimation based on voting disagreement rates is used to extend ideal point estimation to the non-Euclidean setting of hyperbolic metrics. After introducing this framework, comparing it to one- and two-dimensional multidimensional scaling, and arguing that it flexibly captures important higher-dimensional voting behavior, a handful of potential ways to apply this tool are presented. The emphasis throughout is on interpreting these judicial trees and extracting qualitative insights from them.


2009 ◽  
Vol 17 (3) ◽  
pp. 276-290 ◽  
Author(s):  
Michael Peress

Ideal point estimation is a topic of central importance in political science. Published work relying on the ideal point estimates of Poole and Rosenthal for the U.S. Congress is too numerous to list. Recent work has applied ideal point estimation to the state legislatures, Latin American chambers, the Supreme Court, and many other chambers. Although most existing ideal point estimators perform well when the number of voters and the number of bills is large, some important applications involve small chambers. We develop an estimator that does not suffer from the incidental parameters problem and, hence, can be used to estimate ideal points in small chambers. Our Monte Carlo experiments show that our estimator offers an improvement over conventional estimators for small chambers. We apply our estimator to estimate the ideal points of Supreme Court justices in a multidimensional space.


Author(s):  
Alex Acs

Abstract This article develops a procedure for estimating the ideal points of actors in a political hierarchy, such as a public bureaucracy. The procedure is based on a spatial auditing model and is motivated by the idea that while agents within a political hierarchy are typically segregated in different policy fiefdoms, they are bound to a common principal that can scrutinize their policy proposals through selective reviews, or audits. The theoretical model shows how a principal’s decision to audit an agent’s proposal can reveal both actors’ spatial preferences, despite the strategic nature of the interaction. Empirical identification of the ideal points comes from leveraging settings where elections replace principals over time, but not agents. Although the procedure is quite general, I provide an illustration using data on federal regulatory policymaking in the United States and recover ideal point estimates for presidents and agencies across three administrations.


2021 ◽  
pp. 1-18
Author(s):  
Michael Peress

Abstract Recent advances in the study of voting behavior and the study of legislatures have relied on ideal point estimation for measuring the preferences of political actors, and increasingly, these applications have involved very large data matrices. This has proved challenging for the widely available approaches. Limitations of existing methods include excessive computation time and excessive memory requirements on large datasets, the inability to efficiently deal with sparse data matrices, inefficient computation of standard errors, and ineffective methods for generating starting values. I develop an approach for estimating multidimensional ideal points in large-scale applications, which overcomes these limitations. I demonstrate my approach by applying it to a number of challenging problems. The methods I develop are implemented in an r package (ipe).


2005 ◽  
Vol 13 (2) ◽  
pp. 171-187 ◽  
Author(s):  
Joseph Bafumi ◽  
Andrew Gelman ◽  
David K. Park ◽  
Noah Kaplan

Logistic regression models have been used in political science for estimating ideal points of legislators and Supreme Court justices. These models present estimation and identifiability challenges, such as improper variance estimates, scale and translation invariance, reflection invariance, and issues with outliers. We address these issues using Bayesian hierarchical modeling, linear transformations, informative regression predictors, and explicit modeling for outliers. In addition, we explore new ways to usefully display inferences and check model fit.


2021 ◽  
Author(s):  
Marc S. Jacob ◽  
Ugur Ozdemir

The UK House of Lords has increasingly attracted public attention due to several government defeats of Brexit bills. Despite this growing attention, there is little research on how coalitions' and individuals' voting behavior in the upper house of the UK Parliament has transformed since its major reform in 1999. This paper addresses this gap by shedding light on the transformation of Lords' voting behavior between 2000 and 2020. We argue that the British party system's growing bipolarity along the UK's future relationship with the EU had substantive repercussions for decision-making processes in the Lords. Analyzing about 2,400 roll call votes with Optimal Classification (OC) ideal point estimation models, we show that, in the post-Brexit period, partisan clusters among peers dissolved and new voting coalitions emerged, leading to an increasingly unidimensional voting space in the Lords. Our results suggest that the UK's second chamber has undergone a process of ideological realignment after the 2016 Brexit referendum.


2015 ◽  
Vol 112 (13) ◽  
pp. 3937-3942 ◽  
Author(s):  
William Minozzi ◽  
Michael A. Neblo ◽  
Kevin M. Esterling ◽  
David M. J. Lazer

Do leaders persuade? Social scientists have long studied the relationship between elite behavior and mass opinion. However, there is surprisingly little evidence regarding direct persuasion by leaders. Here we show that political leaders can persuade their constituents directly on three dimensions: substantive attitudes regarding policy issues, attributions regarding the leaders’ qualities, and subsequent voting behavior. We ran two randomized controlled field experiments testing the causal effects of directly interacting with a sitting politician. Our experiments consist of 20 online town hall meetings with members of Congress conducted in 2006 and 2008. Study 1 examined 19 small meetings with members of the House of Representatives (average 20 participants per town hall). Study 2 examined a large (175 participants) town hall with a senator. In both experiments we find that participating has significant and substantively important causal effects on all three dimensions of persuasion but no such effects on issues that were not discussed extensively in the sessions. Further, persuasion was not driven solely by changes in copartisans’ attitudes; the effects were consistent across groups.


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