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Dataset for: Predictability Reduces the Event-file Retrieval

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PsychArchives2022-11-07 更新2026-04-25 收录
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https://hdl.handle.net/20.500.12034/5035.2
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Dataset for: Schmalbrock, P., Hommel, B., Münchau, A., Beste, C., & Frings, C. (2022). Predictability Reduces the Event-file Retrieval. Attention, Perception, & Psychophysics. https://doi.org/10.3758/s13414-022-02637-6 There is growing consensus that stimulus–response bindings (event files) play a central role in human action control. Here, we investigated how the integration and the retrieval of event files are affected by the predictability of stimulus components of event files. We used the distractor–response binding paradigm, in which nominally task-irrelevant distractors are repeated or alternated from a prime to a probe display. The typical outcome of these kinds of tasks is that the effects of distractor repetition and response repetition interact: Performance is worse if the distractor repeats but the response does not, or vice versa. This partial-repetition effect was reduced when the distractor was highly predictable (Experiment 1). Separate manipulations of distractor predictability in the prime and probe trial revealed that this pattern was only replicated if the probe distractors were predictable (Experiment 2b, 3), but not if prime distractors were predictable (Experiment 2a). This suggests that stimulus predictability does not affect the integration of distractor information into event files, but the retrieval of these files when one or more of the integrated features are repeated. We take our findings to support theoretical claims that integration and retrieval of event files might differ concerning their sensitivity to top-down factors. Open Access funding enabled and organized by Projekt DEAL. The Deutsche Forschungsgemeinschaft (DFG) supported the research reported in this article (FR2133/15-1). unknown
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PsychArchives
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2022-11-07
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