I checked 15 psychology journals on Saturday, May 23, 2026 using the Crossref API. For the period May 16 to May 22, I found 41 new paper(s) in 13 journal(s).

Advances in Methods and Practices in Psychological Science

Best Practices in Handling Missing Data in Psychological Research
David Moreau
Full text
Whether it stems from participant attrition, nonresponse, unwillingness to disclose information, technical errors, or flawed collection methods, incomplete data pose significant challenges to researchers in psychology. Although a rich methodological literature exists, applied researchers often lack clear guidance for aligning missing-data methods with study design, assumptions, and analytic goals. In this article, I provide a practical, assumption-aware framework for reasoning about missing data in psychology, emphasizing how missingness operates as a selection process and how method choice depends on the underlying data-generating structure. I review commonly used approaches, including likelihood-based estimation, multiple imputation, Bayesian data augmentation, and pattern-mixture models, highlighting their assumptions, strengths, and limitations. To support implementation and pedagogy, I introduce DataPatch, an interactive tool that allows users to simulate missing-data mechanisms, apply alternative handling strategies, and examine their consequences for estimation and interpretation (davidmoreau.shinyapps.io/DataPatch/). Together, the conceptual framework and accompanying tool aim to promote more transparent, principled, and informed handling of missing data in psychological research.
Multicurious: A Multidisciplinary Guide to Multiverse Analysis
Cassie Ann Short, Nate Breznau, Maria Bruntsch, Micha Burkhardt, Niko A. Busch, Elena Cesnaite, Maximilian Frank, Carsten Gießing, Daniel KrĂ€hmer, Daniel Kristanto, Tina Lonsdorf, Claudia Neuendorf, Hung H. V. Nguyen, Manuel Rausch, Xenia Schmalz, Andreas Schneck, Cem Tabakci, Andrea Hildebrandt
Full text
Multiverse analysis offers a comprehensive response to a core vulnerability in empirical research: the uncertainty of scientific conclusions arising from defensible yet flexible data-processing and -analysis decisions. By systematically mapping and computing all or a sample of all plausible data-processing pipelines, multiverse analysis reports the robustness of findings across analytical flexibility and increases transparency in the research process. As its adoption grows across disciplines, so too does the need for clarity on how to design, report, and interpret multiverse results responsibly. In this article, we provide interdisciplinary guidance on key procedural considerations, including defensibility and equivalence evaluations, preregistration, and computational demands. We aim to harmonize terminology, promote best practices, and foster conceptual cohesion across fields, supported by reference to domain-specific resources when appropriate. By doing so, we contribute to the broader movement toward more robust, reproducible, and transparent science, one that not only reports results but also interrogates the analytical pipelines that produce them.

Behavior Research Methods

The talking heads attentional bias assessment task: A readily available, reliable, and effective task for assessing attentional bias
Mahdi Mazidi, Colin MacLeod, Seyran Ranjbar, Owen Myles, Ben Grafton
Full text
Cognitive theories contend that attentional bias to negative information contributes to elevated trait anxiety. However, research in this area has been hindered by the lack of a standardized assessment task that demonstrates the required qualities, including strong internal consistency and ecological validity. The present study aimed to develop and validate the Talking Heads Attentional Bias Assessment Task, an easy-to-implement measure that overcomes the limitations of previous attentional bias assessment tasks. The task employs video-based stimuli conveying emotionally negative or benign information about issues individuals commonly encounter in their daily lives and uses a dual-probe methodology to assess attentional bias. A sample of 168 undergraduate students completed the task along with measures of trait and state anxiety. The results demonstrated that the attentional bias index derived from the task showed excellent internal consistency across multiple reliability assessment methods. Greater attentional bias to negative information was also significantly associated with greater trait anxiety, confirming the task’s sensitivity to anxiety-linked individual differences in such attentional bias. Furthermore, mediation analyses revealed that attentional bias mediated the association between trait anxiety and state anxiety elevation in response to emotional information. We discuss the study’s important theoretical and methodological implications, and convey the task’s capacity to enhance assessment of attentional bias across a wide range of psychological domains.
Probabilistic modeling of the semantic fluency task with extended Markov networks
Miguel López, Natividad Hernåndez Muñoz, Carmela Tomé Cornejo
Full text
Semantic verbal fluency tasks (SFT) provide a window into the structure and dynamics of the mental lexicon by eliciting word sequences guided primarily by semantic associations. We propose a probabilistic framework that models SFT as censored random walks on semantic networks, extended with pseudo-nodes to account for local and global jumps. This representation enables the integration of associative retrieval and sudden resets, capturing both clustering and switching processes. To assess model quality, we define a suite of complementary metrics—global likelihood, frequency likelihood, and bigram relevance—that evaluate not only overall fit but also the distributional properties of word associations. Using a dataset of 677 lists in the category “clothing,” we benchmark existing techniques against our proposed BIGRAM-CN model, which combines statistical constraints with empirical frequencies of word-to-word transitions. Results show that BIGRAM-CN avoids overfitting, generalizes across training and test data, and synthesizes realistic lists more accurately than prior approaches. This work advances computational models of lexical retrieval and offers practical tools for comparing populations, categories, and cognitive profiles in both linguistic and psychological research.
Advancing eye movement analysis through compositional modeling: A new perspective on Yarbus’ classic study
Kamila Fačevicová, Jaroslav Vymazal, Stanislav Popelka
Full text
Eye-tracking metrics based on Areas of Interest (AOIs) often represent the relative allocation of visual attention across stimulus regions. Compositional data analysis (CoDA) provides a mathematically principled framework for analyzing such data and enables the application of a wide range of multivariate statistical methods through their representation in log-ratio coordinates. This study demonstrates the utility of CoDA in AOI-based eye-tracking research using a large-scale replication of Yarbus’ classic “Unexpected Visitor” experiment. Eye movements of 144 participants were recorded with a high-precision eye-tracker while they viewed Ilja Repin’s painting under seven tasks adapted from Yarbus. Total fixation durations within seven AOIs were analyzed either as absolute measures (classical approach) or as compositions representing the relative distribution of viewing time across AOIs. Descriptive CoDA techniques (compositional means, variation matrices, and ternary plots) together with multivariate methods in log-ratio coordinates (principal component analysis, hierarchical clustering, and compositional MANOVA) reproduce the qualitative patterns described by Yarbus and subsequent replications, confirming that task demands strongly shape the relative allocation of attention. Linear discriminant analysis further shows that the task being performed can be inferred from eye-movement patterns with accuracy above the chance level. The paper is conceived as a tutorial introduction to CoDA in eye-tracking research. The compositional framework is particularly appropriate when AOI metrics represent proportions or when total viewing time is fixed by design, while under unconstrained viewing time, it provides a complementary perspective to classical analyses.
Classification errors distort findings in automated speech processing: Examples and solutions from child-development research
Lucas Gautheron, Evan Kidd, Anton Malko, Marvin Lavechin, Alejandrina Cristia
Full text
With the advent of wearable recorders, scientists are increasingly turning to automated methods of analysis of audio and video data in order to measure children’s experience, behavior, and outcomes, with a sizable literature employing long-form audio-recordings to study language acquisition. While numerous articles report on the accuracy and reliability of the most popular automated classifiers, less has been written on the downstream effects of classification errors on measurements and statistical inferences (e.g., the estimate of correlations and effect sizes in regressions). This paper’s main contributions are drawing attention to downstream effects of confusion errors, and providing an approach to measure and potentially recover from these errors. Specifically, we use a Bayesian approach to study the effects of algorithmic errors on key scientific questions, including the effect of siblings on children’s language experience and the association between children’s production and their input. By fitting a joint model of speech behavior and algorithm behavior on real and simulated data, we show that classification errors can significantly distort estimates for both the most commonly used Language ENvironment Analysis (LENAℱ), and a slightly more accurate open-source alternative (the Voice Type Classifier from the ACLEW system). We further show that a Bayesian calibration approach for recovering unbiased estimates of effect sizes can be effective and insightful, but does not provide a foolproof solution.
Estimating marginal effects with zero-inflated models: A tutorial with the R package mzim
Chendong Li, Oi-Man Kwok, Timothy Lawrence
Full text
Count data in the psychological and health sciences are often characterized by an excess of zero values, a feature known as zero inflation. While traditional zero-inflated models, such as the zero-inflated Poisson (ZIP) and zero-inflated negative binomial (ZINB), were developed to handle such data, they present challenges for applied researchers. Standard count models can produce biased estimates, and the dual-parameter output of traditional zero-inflated models provides conditional effects for a latent-at-risk subpopulation, complicating interpretation and often failing to answer research questions about the entire population directly. To address these limitations, marginalized zero-inflated (mZI) models directly estimate the population-averaged effect, yielding a single, interpretable coefficient for each predictor’s overall effect. However, the adoption of mZI models has been hindered by the lack of an accessible software package. The current study has two objectives: first, it provides a tutorial on the theory, estimation, and interpretation of marginalized zero-inflated models. Second, it introduces  mzim , a new R package designed to make both marginalized zero-inflated Poisson (mZIP) and Negative Binomial (mZINB) models readily accessible. Using an empirical example on self-reported youth abuse experiences, we demonstrate a complete workflow with the  mzim  package and compare the results from the mZINB model to traditional approaches, highlighting the practical benefits of the marginalized framework for applied researchers.
Automating data extraction in meta-research: A multi-model benchmark in network psychometrics papers
Benjamin Simsa, Artem Buts, Ivan Ropovik, MatĂșĆĄ Adamkovič
Full text
Manual data extraction in meta-research is often tedious, time-consuming, and error-prone. In this paper, we investigate whether the current generation of large language models (LLMs) can be used to extract accurate information from scientific papers. Across the meta-research literature, these tasks usually range from extracting verbatim information (e.g., the number of participants in a study, effect sizes, or whether a study is preregistered) to making subjective inferences. Using a publicly available dataset containing a wide range of metascientific variables from 43 network psychometrics papers, we tested five LLMs (Claude 4.6 Opus, Claude 4.5 Sonnet, Claude 4.5 Haiku, GPT-5.2, and GPT-5 mini). We used an automated API-based pipeline to extract variables from the documents. This approach allows batch processing of research papers. As such, it represents a more efficient and scalable way to extract metascientific data than the default chat interface. The extraction accuracy ranged from 79.6% to 91.3% across the models. The extraction performance was generally higher for more explicit, verbatim information and worse for variables that required more complicated inference. Furthermore, most models were able to convey uncertainty in more contentious cases. We provide a comparison of the accuracy and cost-effectiveness of the individual models and discuss the characteristics of variables that are and are not suitable for automatic coding. Furthermore, we describe some of the common pitfalls and best practices of automated LLM data extraction. The proposed procedure can substantially reduce the time and costs associated with conducting meta-research.

Computers in Human Behavior

Blurring the Boundaries of the Self: Instagram’s Impact on Bodily Identity and Multisensory Experience Among Young Adults
Maria Sansoni, Jade Portingale, Stefano De Gaspari, Giulia Brizzi, Magdalena Chorzępa, Giuseppe Riva
Full text
Identity Manipulation in Online Grooming: Gendered Strategies Among Male Suspects
Jorge Santos-Hermoso, Virginia Soldino
Full text
Perceived Effectiveness of Online Vigilantism: The Role of Schadenfreude and Moral Grandstanding
Dosun Kim, Yeon Soo Kim
Full text
Beyond the Post: Effects of Vividness Dominance on Attention and Recall of Visual Misinformation on Social Media
Zexin Ma, Jiyoung Lee, Jiyoun Suk
Full text
A dual-component framework of interactive attention: Gaze markers of expertise and engagement in split-attention gameplay
Joshua Juvrud, Katherine Salembier, Margot Delany, Shiloh Frost, Xingcen (Lucy) Liu, Adrian Ɓoboda, Evangelia Sotiriou
Full text
Internet use, social isolation, and loneliness among older adults: A multi-wave analysis
Eleftheria Vaportzis
Full text

Group Processes & Intergroup Relations

Reducing Implicit Prejudice Through Virtual Reality: The Impact of Partial Embodiment and Positive vs. Basic Intergroup Contact
Ankica Kosic, Francesca Valeria Frisari, Corine Stella Kana Kenfack, Salvador Alvidrez Villegas
Full text
This study explores whether exposure to positive (vs. basic) interactions with a migrant through an immersive 360° video with partial embodiment—where participants viewed the scene from a first-person perspective and observed only their virtual hands—can reduce implicit prejudice, attitudes, and emotions toward migrants. A total of 207 Italian participants were involved in the study. Approximately two weeks before the immersive video session, participants completed a questionnaire with scales measuring attitudes and emotions toward migrants and the Racial Implicit Association Test (IAT). In the laboratory, they were randomly assigned to one of two conditions: observing a migrant in the 360° video scenario engaging in either prosocial or basic behavior, while embodying virtual hands with either a White or Black skin tone. Results showed a reduction in implicit racial prejudice across both conditions (positive and basic contact), regardless of hand color. In addition, we observed a significant reduction of negative emotions and negative behavioral intentions toward migrants only in the positive condition. These findings highlight the potential of brief virtual intergroup contact that shows positive behaviors of outgroup members to reduce both implicit and explicit negative attitudes, adding evidence that even short immersive interventions can shape intergroup perceptions.

Journal of Experimental Social Psychology

Expectations of middle school children's academic performance in STEM and the Humanities: The effects of genetic and environmental frameworks
Lisa Luis, Mauro Bianchi, Rosandra Coladonato, Valentina Piccoli, Andrea Carnaghi
Full text
People underestimate how receptive other people are to different political opinions
André Mata, Towe Nilsson, Arvid Erlandsson, Rosårio Ferreira
Full text
Giving women credit where credit is due: The role of amplifying, attributing, and appropriating others' ideas
Tara C. Dennehy, Holly R. Engstrom, Jo Hernanto, Toni Schmader
Full text
“Friend or foe?” the ironic effect of speaking the minority's language in intergroup conflicts: Palestinian reactions to Jewish-Israelis using Arabic
Slieman Halabi, Yechiel Klar, Murad Abu Elheja
Full text
Testing the psychological distinctiveness of proscriptive and prescriptive moral norms: A replication and extension of
Andrew Miles, Yagana Samim, Salwa Khan
Full text

Journal of Personality and Social Psychology

Can I make the time or is it running out? That depends in part on what difficulty implies about me.
Su Young (Kevin) Choi, Daphna Oyserman
Full text

Multivariate Behavioral Research

Individual Variability as a Moderator of Latent Structural Relations
Joshua R. Shulkin
Full text
A Non-Parametric Approach to Modeling Accelerated Longitudinal Designs
Suryadyuti Baral, Jonathan J. Park, Emilio Ferrer
Full text
Estimating Propensity Scores in Causal Inference in High-Dimensional Settings
Wenyi Li, Qian Zhang
Full text
Integrating Double/Debiased Machine Learning into Doubly Robust Estimators for Causal Inference
Muwon Kwon, Peter M. Steiner
Full text
A Two-Step Bayesian Approach to Modeling Within-Person Moderation Using Intensive Longitudinal Data
Yuan Fang, Lijuan Wang
Full text
Classic or Computational Graph? A Comparison of SEM Estimation Frameworks
Chaewon Lee, Kathleen M. Gates
Full text
On the Consequences of Model Misspecification in Longitudinal Missing Data Analysis
Dandan Tang, Xin Tong
Full text
Conflated Random Slopes in Multilevel Analysis
Bladimir Padilla, Lesa Hoffman
Full text

Organizational Research Methods

Assessing Partial Measurement Invariance in Cross-Group, Longitudinal, Congruence, and Multilevel Organizational Studies: Introducing the MEI Package in R
Gordon W. Cheung, Changya Hu, Elena Zubielevitch
Full text
Measurement equivalence/invariance (ME/I) is a prerequisite for cross-group comparisons when using survey data. Although popular structural equation modeling software programs, including Mplus and lavaan, enable tests of ME/I using simple commands, identifying noninvariant items when full ME/I is rejected is more challenging. This paper reviews current procedures for identifying noninvariant items, particularly when there are more than two groups. We recommend systematically rotating the reference items and conducting pairwise comparisons on the factor loadings estimated in the configural invariance model and the intercepts estimated in the metric invariance model. The results are then summarized with the list-and-delete method to identify sets of invariant items and clusters of invariant groups. A custom R package, MEI, is developed to implement our recommended procedures. With simple commands, MEI automatically conducts ME/I tests, identifies noninvariant items, and compares latent means with partial measurement invariance. This allows researchers to interpret cross-group comparison results more precisely. Finally, our procedures for testing ME/I from cross-group comparisons and the MEI package are extended to longitudinal studies with panel data, congruence studies with dyadic data, and multilevel studies with nested data.

Personality and Social Psychology Bulletin

Cultural Tightness Predicts Regional Sociopolitical Ideologies, Beliefs, and Personality Traits
Liz Wilson, Jimmy Calanchini
Full text
Cultural tightness refers to the strength of social norms and tolerance for norm violations within regions. In two studies, we investigated the link between cultural tightness and sociopolitical ideologies, beliefs, and personality traits within the United States and across 56 nations. We relied on two separate operationalizations of cultural tightness and aggregated self-reported sociopolitical ideologies, beliefs, and personality trait data from tens of thousands of geolocated internet respondents. Regression analyses suggest that more culturally tight U.S. states are less open, more conscientious, and higher in the need for certainty. Tighter states also more strongly endorse racial stereotyping, right-wing authoritarianism, and other system-justifying beliefs, but less weakly endorse egalitarianism. In addition, tighter nations are lower in extraversion and creativity. Taken together, we find that cultural tightness is a parsimonious predictor of regional psychological variation across many constructs within the United States and across nations.
Varieties of Negligence
Samuel Murray, Devon Guzy, Santiago Amaya
Full text
Negligence is often conceptualized as a failure of thought, yet social evaluations of negligence depend on how those failures occur. We present a unified framework predicting variation along three axes: whether the agent lacked diligence, whether the agent made a perceptual or mnemonic error, and whether the agent was factually or normatively ignorant with respect to their wrongdoing. Across four pre-registered experiments ( N = 2,727), negligence type affected moral judgment. Process and diligence information differentially influenced blame, wrongness, and accidentality judgments. Using a judgment-updating paradigm, negligence information globally reduced perceived intentionality while selectively increasing blame for certain forms of negligence. Finally, we identified relevant priming effects: emphasizing ease of avoidance increased sanctions, whereas self-projection cues attenuated sanctions. Our results integrate across different lines of research on negligence and specify what factors are associated with different evaluations. We also identify policy-relevant considerations for jury instructions and sentencing for negligence. Participants were recruited through Academic Prolific and were restricted to being located in the United States. Thus, our results are limited in terms of drawing exclusively from people in the United States with Internet access. This presents an important constraint on generalizability. We measured attitudes and judgments through self-report across all studies.
A Life, Not a Nameless Victim: The Impact of Victim Photographs on Perceptions of Victims and Guilt Judgments
Hannah J. Phalen, Kristen L. Gittings, Madison Adamoli, Janice Nadler, Jessica M. Salerno
Full text
The identifiable victim effect suggests that images of murder victims taken before their deaths can increase positive perceptions of those victims, potentially influencing jurors’ decision-making. We investigated whether viewing pre-mortem photographs of murder victims biased jurors’ perceptions of the victim, and consequently their judgments of the defendant. Across three between-subjects experimental studies (total Ns = 2,456), participants who viewed pre-mortem photographs of the victim (vs. did not view) rated the victim more positively. These more positive perceptions, in turn, predicted a higher likelihood of rendering guilty verdicts. Notably, the effect was stronger for White and Black victims than for Latina victims. These findings suggest that even well-intentioned uses of pre-mortem photographs may inadvertently bias jurors and contribute to racial disparities in the administration of justice.
“They Are the Shoulders I Stand On”: Ancestral Self-Concept Increases People of Color’s Racial Equality Activism and Intraminority Solidarity
Minh Duc Pham, Alexandra Garr-Schultz
Full text
The present research examines how the conceptualization of the self as part of one’s ancestry may enhance people of color’s activism. Two correlational studies ( N s = 593 and 160) showed that greater ancestral self-concept was associated with greater past engagement in prejudice confrontation (Study 1a) and racial equality activism (Study 1b). Follow-up experiments with Asian (Study 2; N = 220) and Black (Studies 3–4; Ns = 310 and 511) Americans demonstrated that people who wrote about themselves as part of their ancestry (vs. control condition) expressed greater intentions to participate in racial activism and greater activism tenacity. Notably, ancestral self-concept increased intraminority solidarity, including Black Americans’ pro-Palestine activism intentions (Study 3) and donation to a pro-immigrant cause (Study 4). These effects were mediated by greater endorsement of background-specific strengths, motives to continue one’s ancestral legacy, and linked fate beliefs. Findings advance a strength-based psychological study of the self and activism.
How Effective Are Credible Sources in Changing Behavior? A Systematic Review with Meta-Analysis
Jack Hamer, Tracy Epton, Danielle Hamer, Christopher J. Armitage
Full text
This systematic review and meta-analysis investigated the unique effects of credible sources on performed behavior, rather than behavioral antecedents (i.e., attitudes), and contexts where it is most effective. Six databases were searched to June 2024, yielding 40 effect sizes ( N = 7,995, 58.42% females, mean age of 17.75 years old, with mostly White ethnicity 75.81%) from 34 papers. A random effects model indicated a small positive effect, d = 0.14 (95% CI [0.04, 0.23]). Moderator analyses showed significant positive effects when the credible source had a medical professional qualification, communicated with participants in-person, the intervention was verbal or combined verbal and written messages, when behavior occurred once, and immediately followed the intervention. Because of the small effect, the costs associated with generating credible sources should be balanced against their effectiveness.

Psychological Methods

Extending bias adjustments for R-squared to multilevel models.
Yingchi Guo, Jason D. Rights
Full text
A causal framework for explaining effect heterogeneity in conceptual replications.
Steffi Pohl, Marie-Ann Sengewald, Dennis Kondzic, Jerome Hoffmann, Mathias Twardawski, Peter M. Steiner
Full text

Psychological Science

Multitarget Visual Search Flexibly Switches Between Concurrent and Sequential Search Modes
Alex J. Hoogerbrugge, Christoph Strauch, Noa Hoevers, Christian N. L. Olivers, Tanja C. W. Nijboer, Stefan Van der Stigchel
Full text
Investigations into people’s ability to use multiple working memory representations to concurrently search for targets have led to mixed findings. Although the discourse has predominantly centered around capacity limits in multitarget search, we here propose that people can switch between sequential and concurrent search. In Experiment 1 ( n = 16 adults), manual responses and oculomotor behavior revealed that participants could search sequentially, and concurrently for at least two targets, when instructed. In Experiments 2a ( n = 16 adults) and 2b ( n = 16 adults), participants were free to choose how they searched. Trial-level modeling showed that participants primarily used sequential and concurrent search as specific modes and flexibly adjusted between either mode depending on template set size, template availability, stimulus properties, and individual preference. Our findings stress the dynamic and adaptive nature of visual search. Moreover, understanding that different search modes can be flexibly picked as “tools from the toolbox” may reconcile inconsistencies in prior findings.

Psychology of Popular Media

Does the dog die? Empathic distress and spoilers as self-protection.
Judith E. Rosenbaum, Morgan E. Ellithorpe, Sarah E. Brookes
Full text
“Don't blame me”: Testing the effects of Taylor Swift fan identity on emerging adults’ moral reasoning strategies and environmental cognitions.
Leah Dajches, Taylor A. Foerster, Juliana L. Barbati, Jessica Gall Myrick
Full text

Technology, Mind, and Behavior

Persuasion in human–artificial intelligence systems: How confidence and precision influence acceptance of recommendations in a consumer context.
Alvaro Chacon, Markus Langer
Full text