An emotional student model for game-play adaptation

Game-based learning offers key advantages for learning through experience in conjunction with offering multi-sensorial and engaging communication. However, ensuring that learning has taken place is the ultimate challenge. Intelligent Tutoring Systems (ITSs) have been incorporated into game-based learning environments to guide learners’ exploration. Emotions have proven to be deeply intertwined with cognitive and motivational factors. ITSs attempt to recognise and convey emotion in order to enhance students’ learning and engagement. The ITS student model is responsible for attainment of adaptability and understanding of learners’ needs. It is not clear which emotions are relevant to the teaching-learning experience, or what antecedents and interpersonal differences are involved in determining an emotion. Therefore, student modelling involves uncertainty. Creating an emotional student model that can reason about students’ observable behaviour during online game-play is the main goal of our research. The analysis, design and implementation for this model are our central focus here. The model uses as a basis the Control-Value theory of achievement emotions and employs motivational and cognitive variables to determine an emotion. A Probabilistic Relational Model (PRM) approach was applied to facilitate the derivation of three Dynamic Bayesian Networks (DBNs) corresponding to three types of achievement emotions. Results from a prototyping exercise conducted along with the outcome-prospective emotions DBN are presented and discussed. In future work a larger population of students will be employed to develop an accurate DBN model to incorporate into PlayPhysics, an emotional game-based learning environment for teaching Physics.

[1]  Rosemary Luckin,et al.  Motivating the Learner: An Empirical Evaluation , 2006, Intelligent Tutoring Systems.

[2]  Anne C. Frenzel,et al.  The Control-Value Theory of Achievement Emotions: An Integrative Approach to Emotions in Education , 2007 .

[3]  Reinhard Pekrun,et al.  Progress and open problems in educational emotion research , 2005 .

[4]  Reinhard Pekrun,et al.  Emotion in Education , 2007 .

[5]  Ben Taskar,et al.  Probabilistic Relational Models , 2014, Encyclopedia of Social Network Analysis and Mining.

[6]  Olivier Pourret,et al.  Bayesian networks : a practical guide to applications , 2008 .

[7]  Tom Lunney,et al.  PlayPhysics: An Emotional Games Learning Environment for Teaching Physics , 2010, KSEM.

[8]  I. Ajzen Attitudes, Personality and Behavior , 1988 .

[9]  Finn V. Jensen,et al.  Bayesian Networks and Decision Graphs , 2001, Statistics for Engineering and Information Science.

[10]  Beverly Park Woolf,et al.  Building Intelligent Interactive Tutors: Student-centered Strategies for Revolutionizing E-learning , 2008 .

[11]  Diana G. Oblinger,et al.  The Next Generation of Educational Engagement , 2004 .

[12]  James C. Lester,et al.  Modeling self-efficacy in intelligent tutoring systems: An inductive approach , 2008, User Modeling and User-Adapted Interaction.

[13]  Cristina Conati,et al.  Empirically building and evaluating a probabilistic model of user affect , 2009, User Modeling and User-Adapted Interaction.

[14]  Cynthia Breazeal,et al.  Affective Learning — A Manifesto , 2004 .

[15]  Manolis Mavrikis,et al.  Diagnosing and acting on student affect: the tutor’s perspective , 2008, User Modeling and User-Adapted Interaction.

[16]  Bryan P. Bergeron,et al.  Developing serious games , 2006 .

[17]  Abdolhossein Sarrafzadeh,et al.  "How do you know that I don't understand?" A look at the future of intelligent tutoring systems , 2008, Comput. Hum. Behav..

[18]  Arthur C. Graesser,et al.  Automatic detection of learner’s affect from conversational cues , 2008, User Modeling and User-Adapted Interaction.

[19]  Rosemarie J. E. Rajae-Joordens,et al.  MEASURING EXPERIENCES IN GAMING AND TV APPLICATIONS Investigating the Added Value of a Multi-View Auto-Stereoscopic 3D Display , 2008 .

[20]  Claude Frasson,et al.  Easy Creation of Game-Like Virtual Learning Environments , 2006 .

[21]  Andrew Ortony,et al.  The Cognitive Structure of Emotions , 1988 .

[22]  Anne C. Frenzel,et al.  Between- and within-domain relations of students' academic emotions. , 2007 .

[23]  Luis Enrique Sucar,et al.  A probabilistic relational student model for virtual laboratories , 2005, Sixth Mexican International Conference on Computer Science (ENC'05).

[24]  J. Noguez,et al.  Adding features of educational games for Teaching Physics , 2009, 2009 39th IEEE Frontiers in Education Conference.

[25]  Patrícia Augustin Jaques,et al.  A BDI approach to infer student's emotions in an intelligent learning environment , 2007, Comput. Educ..

[26]  Beverly Park Woolf,et al.  Student Modeling , 2010, Advances in Intelligent Tutoring Systems.

[27]  Jim Reye Two-Phase Updating of Student Models Based on Dynamic Belief Networks , 1998, Intelligent Tutoring Systems.

[28]  Colin Robson,et al.  Real World Research: A Resource for Social Scientists and Practitioner-Researchers , 1993 .

[29]  Benedict du Boulay,et al.  Implementation of motivational tactics in tutoring systems , 1995 .

[30]  Colin D. Gray,et al.  SPSS 16 made simple , 2009 .

[31]  Beverly Park Woolf,et al.  Inferring learning and attitudes from a Bayesian Network of log file data , 2005, AIED.