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Description: The MIND.set platform MIND.set is a pioneering browser-based online platform aiming to integrate psychological behavioral tests into online surveys on desktop and mobile devices. MIND.set was initiated by Susanne Veit (DeZIM) and Iniobong Essien (Leuphana University of Lüneburg) in 2020 and further developed and optimized together with Stefanie Hechler, Elli Zey, and other DeZIM colleagues in the last two years. MIND.set enables an easy and barrier-free integration of psychological behavioral tests into various survey systems (e.g., SoSci Survey, Lime Survey, EVS, Unipark). Currently, MIND.set provides a selection of five indirect bias tests (Sample tests can be accessed in a new tab by clicking on the test title in the following sentence): the Implicit Association Test (IAT, Greenwald et al., 1998), the Affect Misattribution Procedure (AMP, Payne et al., 2005), the Shooter Task (ST, also known as Police Officers' Dilemma Task/PODT, Correll et al., 2002, 2014), the Avoidance Task (AT, Essien et al., 2017) - a variant of the Shooter Task, in Figure 1 referred to as PODTA), and the Source Monitoring Paradigm (SMP, e.g., Bayen et al., 1996; Hechler et al., 2016). The basic idea is to gradually expand MIND.set with additional tests over time.

License: CC-By Attribution 4.0 International

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