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      Automated affect classification and task difficulty adaptation in a competitive scenario based on physiological linkage: An exploratory study.

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          Abstract

          In competitive and cooperative scenarios, task difficulty should be dynamically adapted to suit people with different abilities. State-of-the-art difficulty adaptation methods for such scenarios are based on task performance, which conveys little information about user-specific factors such as workload. Thus, we present an exploratory study of automated affect recognition and task difficulty adaptation in a competitive scenario based on physiological linkage (covariation of participants' physiological responses). Classification algorithms were developed in an open-loop study where 16 pairs played a competitive game while 5 physiological responses were measured: respiration, skin conductance, electrocardiogram, and 2 facial electromyograms. Physiological and performance data were used to classify four self-reported variables (enjoyment, valence, arousal, perceived difficulty) into two or three classes. The highest classification accuracies were obtained for perceived difficulty: 84.3% for two-class and 60.5% for three-class classification. As a proof of concept, the developed classifiers were used in a small closed-loop study to dynamically adapt game difficulty. While this closed-loop study found no clear advantages of physiology-based adaptation, it demonstrated the technical feasibility of such real-time adaptation. In the long term, physiology-based task adaptation could enhance competition and cooperation in many multi-user settings (e.g., education, manufacturing, exercise).

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          Author and article information

          Journal
          Int J Hum Comput Stud
          International journal of human-computer studies
          Elsevier BV
          1071-5819
          1071-5819
          Sep 2021
          : 153
          Affiliations
          [1 ] Department of Electrical and Computer Engineering, University of Wyoming, 1000 E University Ave., Laramie, WY 82071, United States of America.
          Article
          NIHMS1705891 102673
          10.1016/j.ijhcs.2021.102673
          8177075
          34092990
          cf6204c7-d988-4465-97f6-12499cad60ff
          History

          pattern recognition,physiological linkage,physiological measurements,Affective computing,competition,dynamic difficulty adaptation

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