ASSESSMENT OF STUDENTS’ COGNITIVE–AFFECTIVE STATES IN LEARNING WITHIN A COMPUTER-BASED ENVIRONMENT: EFFECTS ON PERFORMANCE

Students’ cognitive-affective states are human elements that are crucial in the design of computer-based learning (CBL) systems.This paper presents an investigation of students’ cognitiveaffective states (i.e., engaged concentration, anxiety, and boredom) when they learn a particular course within CBL systems.The results of past studies by other researchers suggested that certain cognitive-affective states; particularly boredom and anxiety could negatively influence learning in a computer-based environment.This paper investigates the types of cognitive-affective state that students experience when they learn through a specifi c instance of CBL (i.e., a content sequencing system). Further, research was carried to understand whether the cognitive-affective states would infl uence students’ performance within the environment.A one-way between-subject-design experiment was conducted utilizing four instruments (i) CBL systems known as IT-Tutor for learning computer network, (ii) a pre-test, (iii) a post-test, and (iv) self-report inventory to capture the students’ cognitive-affective states. A cluster analysis and discriminant function analysis were employed to identify and classify the students’ cognitiveaffective states.Students were classifi ed according to their prior knowledge to element the effects of it on performance.Then,non-parametric statistical tests were conducted on different pairs of cluster of the cognitive-affective states and prior knowledge to determine differences on students’ performance. The results of this study suggested that all the three cognitive-affective states were experienced by the students. The cognitive-affective states were found to have positive effects on the students’ performance.This study revealed that disengaged cognitive-affective states, particularly boredom can improve learning performance for lowprior knowledge students.

[1]  Luciane Maria Fadel,et al.  The Emotion Component on Usability Testing Human Computer Interface of an Inclusive Learning Management System , 2014, HCI.

[2]  Steven Hornik,et al.  An empirical examination of factors contributing to the creation of successful e-learning environments , 2008, Int. J. Hum. Comput. Stud..

[3]  Scotty D. Craig,et al.  RUNNING HEAD: MULTI-METHOD ASSESSMENT OF AFFECT Multi-Method Assessment of Affective Experience and Expression during Deep Learning , 2010 .

[4]  Bo Zhang,et al.  Quotient Space Based Cluster Analysis , 2006, Foundations and Novel Approaches in Data Mining.

[5]  T. Goetz,et al.  Academic Emotions in Students' Self-Regulated Learning and Achievement: A Program of Qualitative and Quantitative Research , 2002 .

[6]  Slava Kalyuga,et al.  Cognitive Load Theory: Implications for Affective Computing , 2011, FLAIRS.

[7]  Wilhelmina C. Savenye,et al.  Effects of learner control, advisement, and prior knowledge on young students' learning in a hypertext environment , 1994 .

[8]  Norliza Katuk,et al.  Experience beyond knowledge: Pragmatic e-learning systems design with learning experience , 2013, Comput. Hum. Behav..

[9]  J. Turner,et al.  Handbook of the Sociology of Emotions: Volume II , 2014 .

[10]  Hokyoung Ryu,et al.  To Flow and Not to Freeze: Applying Flow Experience to Mobile Learning , 2010, IEEE Transactions on Learning Technologies.

[11]  André Tricot,et al.  Prior knowledge in learning from a non-linear electronic document: Disorientation and coherence of the reading sequences , 2009, Computers in Human Behavior.

[12]  Aspasia Togia,et al.  Computer anxiety and attitudes among undergraduate students in Greece , 2010, Comput. Hum. Behav..

[13]  Lisa Linnenbrink-Garcia,et al.  Students emotions and academic engagement: Introduction to the special issue , 2011 .

[14]  Wioleta Szwoch,et al.  Emotion recognition and its application in software engineering , 2013, 2013 6th International Conference on Human System Interactions (HSI).

[15]  Norliza Katuk,et al.  Progressive assessment of student engagement with web-based guided learning , 2013, Interact. Technol. Smart Educ..

[16]  Antonio Fernández-Caballero,et al.  An Agent-based Intelligent Tutoring System for Enhancing E-Learning / E-Teaching , 2005 .

[17]  Mark R. Lehto,et al.  The effects of text structure and prior knowledge of the learner on computer-based learning , 2008, Comput. Hum. Behav..

[18]  J. Webster,et al.  The Dimensionality and Correlates of Flow in Human-Computer Interactions. , 1993 .

[19]  Robert D. Macredie,et al.  Hypermedia learning and prior knowledge: domain expertise vs. system expertise , 2005, J. Comput. Assist. Learn..

[20]  Norliza Katuk,et al.  Learning experience in dynamic and non-dynamic curriculum sequencing systems : a thesis presented in partial fulfilment of the requirements for the degree of Doctor of Philosophy in Information Technology at Massey University , 2012 .

[21]  Arthur C. Graesser,et al.  Better to be frustrated than bored: The incidence, persistence, and impact of learners' cognitive-affective states during interactions with three different computer-based learning environments , 2010, Int. J. Hum. Comput. Stud..

[22]  Gregory W. Corder,et al.  Nonparametric Statistics for Non-Statisticians: A Step-by-Step Approach , 2009 .

[23]  T. Utlaut Nonparametric Statistics with Applications to Science and Engineering , 2008 .

[24]  Zhihong Zeng,et al.  A Survey of Affect Recognition Methods: Audio, Visual, and Spontaneous Expressions , 2007, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[25]  Theodore J. Kopcha,et al.  Learner preferences and prior knowledge in learner-controlled computer-based instruction , 2008 .

[26]  Jonathan Klein,et al.  This computer responds to user frustration: Theory, design, and results , 2002, Interact. Comput..

[27]  Kimberly B. Rogers,et al.  Measuring Affect and Emotions , 2014 .

[28]  Alex Bennet,et al.  e-Learning as energetic learning , 2008 .

[29]  Nicole Fruehauf Flow The Psychology Of Optimal Experience , 2016 .

[30]  Diane J. Litman,et al.  When Does Disengagement Correlate with Learning in Spoken Dialog Computer Tutoring? , 2011, AIED.

[31]  Rosalind W. Picard Affective computing: challenges , 2003, Int. J. Hum. Comput. Stud..

[32]  Michalinos Zembylas Adult learners’ emotions in online learning , 2008 .

[33]  Hokyoung Ryu,et al.  Risky business or sharing the load? - Social flow in collaborative mobile learning , 2012, Comput. Educ..

[34]  Minjuan Wang,et al.  Affective e-Learning: Using "Emotional" Data to Improve Learning in Pervasive Learning Environment , 2009, J. Educ. Technol. Soc..

[35]  Anastasios A. Economides,et al.  The effect of emotional feedback on behavioral intention to use computer based assessment , 2012, Comput. Educ..

[36]  Daniel Mestre,et al.  Affective, anxiety and behavioral effects of an aversive stimulation during a simulated navigation task within a virtual environment: A pilot study , 2011, Comput. Hum. Behav..

[37]  David Chan,et al.  So Why Ask Me? Are Self-Report Data Really That Bad? , 2009 .

[38]  Pawel Lewicki,et al.  Statistics : methods and applications : a comprehensive reference for science, industry, and data mining , 2006 .

[39]  Armando Barreto,et al.  Non-intrusive Physiological Monitoring for Automated Stress Detection in Human-Computer Interaction , 2007, ICCV-HCI.

[40]  Jun Hu,et al.  How to behave as Alice in Wonderland-about boredom and curiosity , 2010, Entertain. Comput..

[41]  Andrew Schall New Methods for Measuring Emotional Engagement , 2014, HCI.

[42]  Husniza Husni,et al.  Dyslexic children’s reading application: Design for affection , 2013 .

[43]  A Min Tjoa,et al.  Integrated Approach for the Detection of Learning Styles & Affective States , 2009 .

[44]  Yi Pan,et al.  Exploring relations among college students' prior knowledge, implicit theories of intelligence, and self-regulated learning in a hypermedia environment , 2010, Comput. Educ..

[45]  S. Mann,et al.  Boredom in the lecture theatre: An investigation into the contributors, moderators and outcomes of boredom amongst university students , 2009 .

[46]  Reinhard Pekrun,et al.  Boredom in achievement settings: Exploring control–value antecedents and performance outcomes of a neglected emotion. , 2010 .

[47]  Slava Kalyuga The Cambridge Handbook of Multimedia Learning: Prior Knowledge Principle in Multimedia Learning , 2005 .

[48]  Pedro F. Hernández-Ramos,et al.  Flow and cooperative learning in civic game play , 2012, New Media Soc..

[49]  Zhihong Zeng,et al.  A Survey of Affect Recognition Methods: Audio, Visual, and Spontaneous Expressions , 2009, IEEE Trans. Pattern Anal. Mach. Intell..

[50]  Sidney K. D'Mello,et al.  What Are You Feeling? Investigating Student Affective States During Expert Human Tutoring Sessions , 2008, Intelligent Tutoring Systems.

[51]  Jennifer J. Vogel-Walcutt,et al.  The Definition, Assessment, and Mitigation of State Boredom Within Educational Settings: A Comprehensive Review , 2012 .

[52]  David J. Sheskin,et al.  Handbook of Parametric and Nonparametric Statistical Procedures , 1997 .

[53]  Rolph E. Anderson,et al.  Multivariate data analysis (4th ed.): with readings , 1995 .

[54]  R. Pekrun,et al.  Emotions and Motivation in Learning and Performance , 2014 .

[55]  D. Eichel Beyond Boredom And Anxiety Experiencing Flow In Work And Play , 2016 .

[56]  Sergio Gutíerrez sergut Beyond Simple Sequencing : Sequencing of Learning Activities using Hierar ch ical Graphs ∗ , 2003 .