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Jimmy Calanchini

Researcher at University of California, Riverside

Publications -  38
Citations -  1160

Jimmy Calanchini is an academic researcher from University of California, Riverside. The author has contributed to research in topics: Implicit-association test & Implicit attitude. The author has an hindex of 12, co-authored 28 publications receiving 785 citations. Previous affiliations of Jimmy Calanchini include University of California, Davis & University of Freiburg.

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Reducing Implicit Racial Preferences: II. Intervention Effectiveness Across Time

TL;DR: The authors tested 9 interventions (8 real and 1 sham) to reduce implicit racial preferences over time and found that none were effective after a delay of several hours to several days, and also found that these interventions did not change explicit racial preferences and were not reliably moderated by motivations to respond without prejudice.
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Disproportionate use of lethal force in policing is associated with regional racial biases of residents

TL;DR: The authors developed the first predictive models of lethal force by integrating crowd-sourced and fact-checked lethal force databases with regional demographics and measures of geolocated implicit and explicit racial biases collected from 2.156,053 residents across the United States.
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Establishing construct validity evidence for regional measures of explicit and implicit racial bias.

TL;DR: Whereas previous meta-analyses find relatively low explicit-implicit correlations at the individual level, the present research uncovered strong explicit- implicit correlations at regional levels, which have implications for how the authors interpret measures of racial bias at region levels.
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Theory development with agent-based models

TL;DR: In this paper, the authors discuss how organizational psychologists and group dynamics researchers may benefit from the adoption of formal modeling, particularly agent-based modeling, for developing and testing richer theories, and discuss how the model extends the optimal distinctiveness theory and produces novel research questions.