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Improving Learners’ Assessment and Evaluation in Crisis Management Serious Games: An Emotion-based Educational Data Mining Approach

•Developing an emotion-based educational data mining method for evaluating learners’ affective states in collaborative crisis management serious games at two levels: individual and collective.•Method application on a game-based evacuation scenario aiming to train and to raise awareness among student...

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Published in:Entertainment computing 2021-05, Vol.38, p.100428, Article 100428
Main Authors: Daoudi, Ibtissem, Chebil, Raoudha, Tranvouez, Erwan, Lejouad Chaari, Wided, Espinasse, Bernard
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creator Daoudi, Ibtissem
Chebil, Raoudha
Tranvouez, Erwan
Lejouad Chaari, Wided
Espinasse, Bernard
description •Developing an emotion-based educational data mining method for evaluating learners’ affective states in collaborative crisis management serious games at two levels: individual and collective.•Method application on a game-based evacuation scenario aiming to train and to raise awareness among students of a university on evacuating all the present persons, especially people with special needs, during a fire emergency situation.•Proposing novel learners’ affective transitions from boredom to frustration and from frustration to confusion. For several years, there has been growing interest in the development and use of serious games to improve individuals' quality of life and behavior. In particular, Crisis Management Serious Games (CMSG) have shown their potential for teaching people both technical and soft skills related to managing crises in a safe environment while reducing training costs. To improve their effectiveness, several evaluation approaches of CMSGs have been proposed. However, despite its interest, the learner's emotional state is often neglected. As a result, learners may end up with a deep frustration or boredom. Therefore, we propose an Educational Data Mining (EDM) approach to evaluate learners' affective states in collaborative CMSGs. This approach is applied to assess learners' engagement during a game-based evacuation scenario aiming to train and to raise awareness among students of a university on evacuating the present persons during a fire emergency situation. The experimental results confirm the major predictions of learners' affective dynamics and uncover novel findings namely the presence of transitions from boredom to frustration and from frustration to confusion. Our study shows that combining gaming and emotion aspects under an EDM approach to evaluate CMSGs is interesting since it gives reliable results in a less invasive way.
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subjects affective states
Artificial Intelligence
Computer Science
crisis management
emotions
evacuation scenario
learners' assessment and evaluation
Serious games
Technology for Human Learning
title Improving Learners’ Assessment and Evaluation in Crisis Management Serious Games: An Emotion-based Educational Data Mining Approach
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