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Working paper
Surrounded and threatened: how neighborhood composition reduces ethnic voting through intimidation
In: Political science research and methods: PSRM, Band 10, Heft 1, S. 68-81
ISSN: 2049-8489
AbstractEthnic voting is an important phenomenon in the political lives of numerous countries. In the present paper, we propose a theory explaining why ethnic voting is more prevalent in certain localities than in others and provide evidence for it. We argue that local ethnic geography affects ethnic voting by making voters of ethnicity that finds itself in the minority fear intimidation by their ethnic majority neighbors. We provide empirical evidence for our claim using the data from round 4 of the Afrobarometer survey in Ghana to measure the voters' beliefs that they are likely to face intimidation during electoral campaigns. Using geocoded data from rounds three and four of the Afrobarometer, as well as data from the Ghana Demographic and Health Survey, we find no evidence for local public goods provision as an alternative mechanism.
Validating Self-Reported Turnout by Linking Public Opinion Surveys with Administrative Records
In: The public opinion quarterly: POQ, Band 83, Heft 4, S. 723-748
ISSN: 1537-5331
Although it is widely known that the self-reported turnout rates obtained from public opinion surveys tend to substantially overestimate actual turnout rates, scholars sharply disagree on what causes this bias. Some blame overreporting due to social desirability, whereas others attribute it to nonresponse bias and the accuracy of turnout validation. While we can validate self-reported turnout by directly linking surveys with administrative records, most existing studies rely on proprietary merging algorithms with little scientific transparency and report conflicting results. To shed light on this debate, we apply a probabilistic record linkage model, implemented via the open-source software package fastLink, to merge two major election studies—the American National Election Studies and the Cooperative Congressional Election Survey—with a national voter file of over 180 million records. For both studies, fastLink successfully produces validated turnout rates close to the actual turnout rates, leading to public-use validated turnout data for the two studies. Using these merged data sets, we find that the bias of self-reported turnout originates primarily from overreporting rather than nonresponse. Our findings suggest that those who are educated and interested in politics are more likely to overreport turnout. Finally, we show that fastLink performs as well as a proprietary algorithm.
SSRN
Working paper
The National News Media's Effect on Congress: How Fox News Affected Elites in Congress
In: The journal of politics: JOP, Band 76, Heft 4, S. 928-943
ISSN: 0022-3816
The National News Media's Effect on Congress: HowFox NewsAffected Elites in Congress
In: The journal of politics: JOP, Band 76, Heft 4, S. 928-943
ISSN: 1468-2508
SSRN
Working paper
Jailed While Presumed Innocent: The Demobilizing Effects of Pretrial Incarceration
In: The journal of politics: JOP, Band 84, Heft 3, S. 1777-1790
ISSN: 1468-2508
Using a Probabilistic Model to Assist Merging of Large-Scale Administrative Records
In: American political science review, Band 113, Heft 2, S. 353-371
ISSN: 1537-5943
Since most social science research relies on multiple data sources, merging data sets is an essential part of researchers' workflow. Unfortunately, a unique identifier that unambiguously links records is often unavailable, and data may contain missing and inaccurate information. These problems are severe especially when merging large-scale administrative records. We develop a fast and scalable algorithm to implement a canonical model of probabilistic record linkage that has many advantages over deterministic methods frequently used by social scientists. The proposed methodology efficiently handles millions of observations while accounting for missing data and measurement error, incorporating auxiliary information, and adjusting for uncertainty about merging in post-merge analyses. We conduct comprehensive simulation studies to evaluate the performance of our algorithm in realistic scenarios. We also apply our methodology to merging campaign contribution records, survey data, and nationwide voter files. An open-source software package is available for implementing the proposed methodology.
SSRN
Working paper
Russian Invasion of Ukraine and Chinese Public Support for War
In: International organization, Band 78, Heft 2, S. 341-360
ISSN: 1531-5088
AbstractThis study examines how the Russian invasion of Ukraine and the subsequent Western responses influence Chinese public opinion on the use of force. Using two original, preregistered online survey experiments, first in June 2022 and then in June 2023, we show that the Russian invasion is associated with a modest but statistically significant increase in Chinese support for using military force in international affairs in general and against Taiwan in particular. However, information on Western military measures aiding Ukraine curbs the modest impact of the invasion. Such information is especially effective in reducing support for an outright military invasion of Taiwan. Causal mediation analyses reveal that the Russian invasion influences public opinion by inducing optimism regarding military success and pessimism regarding peaceful resolution of the conflict. These findings suggest that foreign military aggression and subsequent international countermeasures can sway domestic public opinion on using military force.
Scaling Data from Multiple Sources
In: Political analysis: PA ; the official journal of the Society for Political Methodology and the Political Methodology Section of the American Political Science Association, Band 29, Heft 2, S. 212-235
ISSN: 1476-4989
AbstractWe introduce a method for scaling two datasets from different sources. The proposed method estimates a latent factor common to both datasets as well as an idiosyncratic factor unique to each. In addition, it offers a flexible modeling strategy that permits the scaled locations to be a function of covariates, and efficient implementation allows for inference through resampling. A simulation study shows that our proposed method improves over existing alternatives in capturing the variation common to both datasets, as well as the latent factors specific to each. We apply our proposed method to vote and speech data from the 112th U.S. Senate. We recover a shared subspace that aligns with a standard ideological dimension running from liberals to conservatives, while recovering the words most associated with each senator's location. In addition, we estimate a word-specific subspace that ranges from national security to budget concerns, and a vote-specific subspace with Tea Party senators on one extreme and senior committee leaders on the other.
Improving Probabilistic Models In Text Classification Via Active Learning
In: American political science review, S. 1-18
ISSN: 1537-5943
Social scientists often classify text documents to use the resulting labels as an outcome or a predictor in empirical research. Automated text classification has become a standard tool since it requires less human coding. However, scholars still need many human-labeled documents for training. To reduce labeling costs, we propose a new algorithm for text classification that combines a probabilistic model with active learning. The probabilistic model uses both labeled and unlabeled data, and active learning concentrates labeling efforts on difficult documents to classify. Our validation study shows that with few labeled data, the classification performance of our algorithm is comparable to state-of-the-art methods at a fraction of the computational cost. We replicate the results of two published articles with only a small fraction of the original labeled data used in those studies and provide open-source software to implement our method.
Crime and Growth Convergence: Evidence from Mexico
In: World Bank Policy Research Working Paper No. 6730
SSRN
Working paper
Income inequality and violent crime: Evidence from Mexico's drug war
In: Journal of development economics, Band 120, S. 128-143
ISSN: 0304-3878