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Featured researches published by Patrick S. Forscher.


Academic Medicine | 2015

The effect of an intervention to break the gender bias habit for faculty at one institution: a cluster randomized, controlled trial.

Molly Carnes; Patricia G. Devine; Linda Baier Manwell; Angela Byars-Winston; Eve Fine; Cecilia E. Ford; Patrick S. Forscher; Carol Isaac; Anna Kaatz; Wairimu Magua; Mari Palta; Jennifer Sheridan

Purpose Despite sincere commitment to egalitarian, meritocratic principles, subtle gender bias persists, constraining women’s opportunities for academic advancement. The authors implemented a pair-matched, single-blind, cluster randomized, controlled study of a gender-bias-habit-changing intervention at a large public university. Method Participants were faculty in 92 departments or divisions at the University of Wisconsin–Madison. Between September 2010 and March 2012, experimental departments were offered a gender-bias-habit-changing intervention as a 2.5-hour workshop. Surveys measured gender bias awareness; motivation, self-efficacy, and outcome expectations to reduce bias; and gender equity action. A timed word categorization task measured implicit gender/leadership bias. Faculty completed a work–life survey before and after all experimental departments received the intervention. Control departments were offered workshops after data were collected. Results Linear mixed-effects models showed significantly greater changes post intervention for faculty in experimental versus control departments on several outcome measures, including self-efficacy to engage in gender-equity-promoting behaviors (P = .013). When ≥ 25% of a department’s faculty attended the workshop (26 of 46 departments), significant increases in self-reported action to promote gender equity occurred at three months (P = .007). Post intervention, faculty in experimental departments expressed greater perceptions of fit (P = .024), valuing of their research (P = .019), and comfort in raising personal and professional conflicts (P = .025). Conclusions An intervention that facilitates intentional behavioral change can help faculty break the gender bias habit and change department climate in ways that should support the career advancement of women in academic medicine, science, and engineering.


Journal of Experimental Social Psychology | 2017

A gender bias habit-breaking intervention led to increased hiring of female faculty in STEMM departments

Patricia G. Devine; Patrick S. Forscher; William T. L. Cox; Anna Kaatz; Jennifer Sheridan; Molly Carnes

Addressing the underrepresentation of women in science is a top priority for many institutions, but the majority of efforts to increase representation of women are neither evidence-based nor rigorously assessed. One exception is the gender bias habit-breaking intervention (Carnes et al., 2015), which, in a cluster-randomized trial involving all but two departmental clusters (N = 92) in the 6 STEMM focused schools/colleges at the University of Wisconsin - Madison, led to increases in gender bias awareness and self-efficacy to promote gender equity in academic science departments. Following this initial success, the present study compares, in a preregistered analysis, hiring rates of new female faculty pre- and post-manipulation. Whereas the proportion of women hired by control departments remained stable over time, the proportion of women hired by intervention departments increased by an estimated 18 percentage points (OR = 2.23, dOR = 0.34). Though the preregistered analysis did not achieve conventional levels of statistical significance (p < 0.07), our study has a hard upper limit on statistical power, as the cluster-randomized trial has a maximum sample size of 92 departmental clusters. These patterns have undeniable practical significance for the advancement of women in science, and provide promising evidence that psychological interventions can facilitate gender equity and diversity.


Advances in Methods and Practices in Psychological Science | 2018

The Psychological Science Accelerator: Advancing Psychology through a Distributed Collaborative Network

Hannah Moshontz; Lorne Campbell; Charles R. Ebersole; Hans IJzerman; Heather L. Urry; Patrick S. Forscher; Jon Grahe; Randy J. McCarthy; Erica D. Musser; Protzko

Concerns about the veracity of psychological research have been growing. Many findings in psychological science are based on studies with insufficient statistical power and nonrepresentative samples, or may otherwise be limited to specific, ungeneralizable settings or populations. Crowdsourced research, a type of large-scale collaboration in which one or more research projects are conducted across multiple lab sites, offers a pragmatic solution to these and other current methodological challenges. The Psychological Science Accelerator (PSA) is a distributed network of laboratories designed to enable and support crowdsourced research projects. These projects can focus on novel research questions or replicate prior research in large, diverse samples. The PSA’s mission is to accelerate the accumulation of reliable and generalizable evidence in psychological science. Here, we describe the background, structure, principles, procedures, benefits, and challenges of the PSA. In contrast to other crowdsourced research networks, the PSA is ongoing (as opposed to time limited), efficient (in that structures and principles are reused for different projects), decentralized, diverse (in both subjects and researchers), and inclusive (of proposals, contributions, and other relevant input from anyone inside or outside the network). The PSA and other approaches to crowdsourced psychological science will advance understanding of mental processes and behaviors by enabling rigorous research and systematic examination of its generalizability.


Archive | 2012

A Meta-Analysis of Procedures to Change Implicit Measures

Patrick S. Forscher; Calvin Lai; Jordan Axt; Charles R. Ebersole; Michelle Herman; Patricia G. Devine; Brian A. Nosek


Archive | 2018

Sharing replicable research

Neil Lewis; Patrick S. Forscher; Nick Fox; Randy J. McCarthy; Joshua Grubbs; James A. J. Heathers; Cathleen O'Grady; Joseph David Fridman; Kathleen Schmidt; Nicholas J. L. Brown


Archive | 2018

Adaptive design simulations

Patrick S. Forscher; Valerie Jones Taylor; Neil Lewis; Daniel Cavagnaro


Archive | 2018

A Large-Scale, Multi-Site Examination of Stereotype Threat Across Varying Operationalizations

Patrick S. Forscher; Valerie Jones Taylor; Neil Lewis; Daniel Cavagnaro


Archive | 2017

The role of intentions in conceptions of prejudice: An historical perspective

Patrick S. Forscher; Patricia G. Devine


Archive | 2017

Small-sample collaboration round-tables to increase sample diversity

Yuichi Shoda; John P. Wilson; Jessica Kay Flake; Heather L. Urry; Randy J. McCarthy; Christopher R. Chartier; Sharon Lee Armstrong; Patrick S. Forscher; John Flournoy; Neil Lewis


Archive | 2017

Breaking the prejudice habit: Automaticity and control in the context of a long-term goal

Patrick S. Forscher; Patricia G. Devine

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Patricia G. Devine

University of Wisconsin-Madison

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William T. L. Cox

University of Wisconsin-Madison

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Calvin Lai

University of Virginia

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Randy J. McCarthy

Northern Illinois University

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Anna Kaatz

University of Wisconsin-Madison

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Jennifer Sheridan

University of Wisconsin-Madison

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Jordan Axt

University of Virginia

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