I checked 7 public opinion journals on Saturday, May 16, 2026 using the Crossref API. For the period May 09 to May 15, I found 7 new paper(s) in 4 journal(s).

Journal of Elections, Public Opinion and Parties

Sleeping politics off: the effect of sleep duration on political participation and attitudes
Yael R. Kaplan, Israel Waismel-Manor, Aleksander Ksiazkiewicz
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Journal of Official Statistics

Algorithm-Assisted Inference and the Future of Official Statistics
Adrien Allorant, Paul A. Smith
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Artificial intelligence is entering official statistics through automated coding, imputation, nowcasting from alternative data sources, and small area estimation. This article examines AI adoption through the lens of methodological transitions in survey sampling—from design-based inference through model-assisted estimation—and addresses three questions. First, what is the relationship between algorithm-assisted and model-assisted inference? We show that generalized difference estimators can incorporate machine learning predictions in the same way they incorporate parametric working models. Second, what quality framework extensions are needed for operational deployment? Drawing on vignettes from European and North American statistical offices, we identify five areas requiring development: training data documentation, algorithmic transparency, validation protocols, uncertainty characterization, and reproducibility. We argue for prequential evaluation—assessing calibration and stability over successive production cycles—as an operational practice suited to algorithm-assisted systems. Third, what institutional challenges distinguish AI from earlier transitions? We examine the public-private asymmetry in AI development: whereas twentieth-century methodological innovations emerged largely from public institutions, contemporary AI capabilities are concentrated in private technology companies. European Statistical System initiatives illustrate governance responses, but dependency risks persist. We conclude that algorithm-assisted inference can succeed, but only if it can be made auditable, reproducible, and publicly defensible.
Calibrating Nonresponse Bias: A Cautionary Tale
Raimund Wildner, Volker Bosch, Florian Meinfelder
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Low response rates due to unit nonresponse have always been a ubiquitous problem in survey-based empirical research, and calibration is a popular method to adjust for bias caused by unit nonresponse. Typically, some external information on the true population quantities of margins for some calibration variables is available, and sometimes also of higher-order interactions. Weighting algorithms try to adjust the sample to these external benchmarks. It is generally assumed that even if the underlying missingness mechanism of the unit nonresponse is non-ignorable, weighting will at least alleviate the severity of the bias. We discuss data situations where weighting under a missing at random (MAR) assumption adjusts the sample correctly but still increases the bias for the analysis model, and we describe strategies for identifying auxiliary variables that are less susceptible to these unwanted effects.
Hierarchy-Aware Heterogeneous Graph Neural Network for Occupation Title Coding
Yi Xie, Wenbin Zhu
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Occupation coding encodes job titles into standard occupation labels, which is effective for data processing but tedious. Research proves that classic machine learning is effective, but accuracy needs further improvement. We construct a real data set with 881 occupation categories, including 41,297 pairs of job titles and corresponding labels. We design a hierarchy-aware heterogeneous graph neural network, combining prior knowledge from occupation category trees and synonyms. Results show our model outperforms other methods by 7.62% on micro-F1. It also alleviates the dependence on data as it achieves 52.28% on micro-F1 with only 30% of the original training data set.

Politics, Groups, and Identities

Community-based leaders and civically engaged research: lessons from the remaking of the Latinx Organizational Archives Project
Angie Bautista-Chavez, Dulce Juarez Aguilar, Andrea Whiting, Victoria Villalba
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The legacy of American territorial imperialism and its consequences for civil rights
Jordan Carr Peterson
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Public Opinion Quarterly

Do Group-Based Inequalities Feel More Unjust? Experimental Evidence from Economically Disadvantaged Groups in India, South Africa, and the United States
Lasse Egendal Leipziger, Laurits Florang Aarslew, Matias Engdal Christensen
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Macro-level research finds that group-based inequalities are more likely than interpersonal inequalities to spark political conflict and instability. However, the individual-level mechanisms driving this relationship remain empirically underexamined. We test the central hypothesis that group-based disparities evoke stronger feelings and perceptions of injustice than interpersonal inequalities. Drawing on three preregistered priming experiments among disadvantaged groups in India (n = 1,600), South Africa (n = 1,600), and the United States (n = 3,000), we find limited evidence that intergroup inequality is perceived as more unfair and evokes stronger feelings of injustice than interpersonal inequality. Our findings question the view that ethnic inequalities are perceived as particularly unfair at the individual level, suggesting that their link to conflict may instead operate through other micro-level mechanisms.