This book explores AI methodologies for the implementation of affective states in intelligent learning environments. Divided into four parts, Multimodal Affective Computing: Technologies and Applications in Learning Environments begins with an overview of Affective Computing and Intelligent Learning Environments, from their fundamentals and essential theoretical support up to their fusion and some successful practical applications. The basic concepts of Affective Computing, Machine Learning, and Pattern Recognition in Affective Computing, and Affective Learning Environments are presented in a comprehensive and easy-to-read manner. In the second part, a review on the emerging field of Sentiment Analysis for Learning Environments is introduced, including a systematic descriptive tour through topics such as building resources for sentiment detection, methods for data representation, designing and testing the classification models, and model integration into a learningsystem. The methodologies corresponding to Multimodal Recognition of Learning-Oriented Emotions are presented in the third part of the book, where topics such as building resources for emotion detection, methods for data representation, multimodal recognition systems, and multimodal emotion recognition in learning environments are presented. The fourth and last part of the book is devoted to a wide application field of the combination of methodologies, such as Automatic Personality Recognition, dealing with issues such as building resources for personality recognition, methods for data representation, personality recognition models, and multimodal personality recognition for affective computing.
This book can be very useful not only for beginners who are interested in affective computing and intelligent learning environments, but also for advanced and experts in the practice and developments of the field. It complies an end-to-end treatment on these subjects, especially with educational applications, making it easy for researchers and students to get on track with fundamentals, established methodologies, conventional evaluation protocols, and the latest progress on these subjects.Spis treści
Part I: Fundamentals.- Chapter 1. Affective Computing.- Chapter 2. Machine learning and pattern recognition in affective computing.- Chapter 3. Affective Learning Environments.- Part II: Sentiment Analysis for Learning Environments.- Chapter 4. Building resources for sentiment detection.- Chapter 5. Methods for data representation.- Chapter 6. Designing and testing the classification models.- Chapter 7. Model integration to a learning system.- Part III: Multimodal Recognition of Learning-Oriented Emotions.- Chapter 8. Building Resources for Emotion Detection.- Chapter 9. Methods for Data Representation.- Chapter 10. Multimodal recognition systems.- Chapter 11. Multimodal emotion recognition in learning environments.- Part IV: Automatic Personality Recognition.- Chapter 12. Building resources for personality recognition.- Chapter 13. Methods for data representation.- Chapter 14. Personality recognition models.- Chapter 15. Multimodal personality recognition for affective computing.
O autorze
Ramon Zatarain Cabada. Professor and Researcher at the Instituto Tecnológico de Culiacán, Mexico. He is a regular member of the Mexican Academy of Computing (AMEXCOMP), the Mexican Society of Artificial Intelligence (SMIA), and the Mexican System of Researchers Level I (SNI). He has been a professor and Researcher at institutions such as Instituto Tecnológico de Toluca, the University of the State of México (UAEM), and the Instituto Tecnológico de Aguascalientes. He was a leader to create programs for Computer Science (Master and Ph D). He has served as co-editor of a special issue of Educational Technology and Society and author of chapters in different Springer books such as Soft Computing for Recognition Based on Biometrics, Social Networking and Education, and Current Trends on Knowledge-Based Systems. As a researcher he has been a leader in more than 20 research projects and has more than 100 publications in different international journals and proceedings. His researchinterests are on Intelligent Learning Environments, Affective Computing, and Artificial Intelligence applied to Education.
Héctor Manuel Cárdenas López. Research assistant at the Instituto Tecnológico de Culiacán, Mexico. He is currently working towards a Ph D degree in Engineering Sciences with the topic Multimodal Emotion and Personality Recognition. He is a member of the Thematic Network of Applied Computational Intelligence (Red ICA). His main research interest includes Multimodal deep learning techniques, human behavior classification for emotion and personality recognition, affective tutoring systems, and cognitive oriented emotions.
Hugo Jair Escalante. Senior researcher scientist INAOE, Mexico and member of the board of directors of Cha Learn USA, Chair officer of the IAPR Technical Committee 12. He is a regular member of the Mexican Academy of Sciences (AMC), the Mexican Academy of Computing (AMEXCOMP) and Mexican System of Researchers Level II (SNI). He was editor of the Springer Series on Challenges in Machine Learning 2017-2023 and is Associate Editor of IEEE Transactions on Affective Computing. He has been involved in the organization of several challenges in machine learning and computer vision collocated with top venues. He has served as competition chair of Neur IPS2020, FG2020 and ICPR2020, Neur IPS2019, PAKDD2019-2018, IJCNN2019. His research interests are on machine learning, challenge organization, and its applications on language and vision.