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Chris Biemann

Showing results (1-10 of 6) with videos related to

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Journal of Experimental Psychology. Learning, Memory, and Cognition|December 14, 2023
Mechanism of semantic processing of lexicalized and novel compound words: An eye movement studyJingwen Wang, Jinmian Yang, Chris Biemann, et al.
Frontiers in Artificial Intelligence|February 21, 2022
Language Models Explain Word Reading Times Better Than Empirical PredictabilityMarkus J Hofmann, Steffen Remus, Chris Biemann, et al.
Brain Informatics|October 18, 2016
An adaptive annotation approach for biomedical entity and relation recognitionSeid Muhie Yimam, Chris Biemann, Ljiljana Majnaric, et al.
Frontiers in Psychology|October 19, 2011
Remembering words in context as predicted by an associative read-out modelMarkus J Hofmann, Lars Kuchinke, Chris Biemann, et al.
Psychonomic Bulletin & Review|March 17, 2018
A novel co-occurrence-based approach to predict pure associative and semantic primingAndre Roelke, Nicole Franke, Chris Biemann, et al.
Cognitive Science|August 12, 2018
Simple Co-Occurrence Statistics Reproducibly Predict Association RatingsMarkus J Hofmann, Chris Biemann, Chris Westbury, et al.
Pageof 1

Showing results (1-10 of 6) with videos related to

Sort By:
Pageof 1
Journal of Experimental Psychology. Learning, Memory, and Cognition|December 14, 2023
Mechanism of semantic processing of lexicalized and novel compound words: An eye movement studyJingwen Wang, Jinmian Yang, Chris Biemann, et al.
Frontiers in Artificial Intelligence|February 21, 2022
Language Models Explain Word Reading Times Better Than Empirical PredictabilityMarkus J Hofmann, Steffen Remus, Chris Biemann, et al.
Brain Informatics|October 18, 2016
An adaptive annotation approach for biomedical entity and relation recognitionSeid Muhie Yimam, Chris Biemann, Ljiljana Majnaric, et al.
Frontiers in Psychology|October 19, 2011
Remembering words in context as predicted by an associative read-out modelMarkus J Hofmann, Lars Kuchinke, Chris Biemann, et al.
Psychonomic Bulletin & Review|March 17, 2018
A novel co-occurrence-based approach to predict pure associative and semantic primingAndre Roelke, Nicole Franke, Chris Biemann, et al.
Cognitive Science|August 12, 2018
Simple Co-Occurrence Statistics Reproducibly Predict Association RatingsMarkus J Hofmann, Chris Biemann, Chris Westbury, et al.
Pageof 1