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Schröger's main fields of research include perception, attention, and memory. He usually works in audition, but he also investigates visual and multimodal mechanisms of human information processing. Among other scientific contributions, he has developed an experimental paradigm for assessing the mechanisms of automatic distraction of attention and he was able to show that automatic irregularity detection involves both sensory adaptation processes and cognitive comparison processes of sensory memory.
In a Reinhart Koselleck grant awarded from the German Research Foundation, he contributed to a theory of predictive modelling in audition. Due to generative mental models incoming sounds can be processed with astonishing speed as when comprehending spoken language. Likewise, the specific processing of sounds that a person creates by means of its own behavior can be explained by the principles of predictive modeling. In order to optimize a predictive model, the information processing system calculates predictive errors as the difference between the prediction and the actual stimulus signal. Furthermore, Schröger is interested in the History and Methods of Psychology.
As of January 2021, Schröger had published more than 300 scientific papers, book chapters, and books and been an honorary reviewer for more than 100 scientific journals and organizations. According to an analysis of Ioannidis et al. (2020) Schröger belongs to the worldwide most (top 2 promille) cited scientists.
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crossref(2024)
PSYCHOPHYSIOLOGYpp.e14545-e14545, (2024)
EUROPEAN JOURNAL OF NEUROSCIENCEno. 5 (2024): 1047-1060
The Sage Handbook of Cognitive and Systems Neurosciencepp.337-350, (2024)
Psychophysiologypp.e14504-e14504, (2023)
PLOS ONEno. 11 (2023): e0284836-e0284836
PEOPLE AND NATUREno. 1 (2023): 180-201
Frontiers in human neuroscience (2023): 1249413
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