Abstract:
Adaptive e-learning can be used to personalize learning environment for students to meet their individual demands. Individual differences depend on the students' personal...Show MoreMetadata
Abstract:
Adaptive e-learning can be used to personalize learning environment for students to meet their individual demands. Individual differences depend on the students' personality traits. Numerous studies have indicated that understanding the role of personality in the learning process can facilitate learning. Hence, personality identification in e-learning is a critical issue in education. In this study, we propose the enhanced extended nearest neighbor (EENN) algorithm to automatically identify two of the Big Five personality traits from students' behavior in online learning: openness to experience and extraversion. The performance of the proposed method is evaluated using a fivefold cross-validation approach on data from 662 senior high school students. The experimental results indicate that the EENN method can automatically recognize personality at an average accuracy of 0.758. The optimized method that combines EENN with particle swarm optimization significantly improves the identification, resulting in an average accuracy of 0.976. The results can benefit students by increasing the accuracy of personalization based on their personality traits, while simultaneously allowing them to be better understood and possibly allowing their instructors to provide more appropriate learning interventions.
Published in: IEEE Transactions on Learning Technologies ( Volume: 13, Issue: 1, 01 Jan.-March 2020)
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- IEEE Keywords
- Index Terms
- Online Learning ,
- Learning Behavior ,
- Automatic Identification ,
- Automatic Personality ,
- Learning Process ,
- Personality Traits ,
- Learning Environment ,
- Average Accuracy ,
- Individual Learning ,
- Particle Swarm Optimization ,
- Five-factor Model ,
- Senior High School ,
- Openness To Experience ,
- Big Five Personality ,
- Learning Intervention ,
- Senior High School Students ,
- Distinct Features ,
- Support Vector Machine ,
- Behavioral Characteristics ,
- Unknown Samples ,
- Student Model ,
- Learning Management System ,
- Particle Position ,
- Personality Types ,
- Self-regulated Learning ,
- Number Of Data Samples ,
- E-learning Environment ,
- Automatic Approach ,
- Higher Extraversion ,
- NEO-FFI
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Online Learning ,
- Learning Behavior ,
- Automatic Identification ,
- Automatic Personality ,
- Learning Process ,
- Personality Traits ,
- Learning Environment ,
- Average Accuracy ,
- Individual Learning ,
- Particle Swarm Optimization ,
- Five-factor Model ,
- Senior High School ,
- Openness To Experience ,
- Big Five Personality ,
- Learning Intervention ,
- Senior High School Students ,
- Distinct Features ,
- Support Vector Machine ,
- Behavioral Characteristics ,
- Unknown Samples ,
- Student Model ,
- Learning Management System ,
- Particle Position ,
- Personality Types ,
- Self-regulated Learning ,
- Number Of Data Samples ,
- E-learning Environment ,
- Automatic Approach ,
- Higher Extraversion ,
- NEO-FFI
- Author Keywords