RP-Department of Educational Communication and Technology
Permanent URI for this collection
Browse
Browsing RP-Department of Educational Communication and Technology by Subject "Affective state"
Now showing 1 - 1 of 1
Results Per Page
Sort Options
Item Automatic Student Affective State Detection from Plain Text(International Scientific Research and Researchers Association, 2021) Dan, O. Anne; Chepkemoi, Agnes; Maina, ElizaphanWe explore the concept of automatic detection of affective state of a learner in an e learning environment. We propose a model to detect the emotion from learners’ text. We employ machine learning algorithms with ISEAR data and twitter data from Kaggle data repository. We follow the conventional steps of natural language processing; text preparation, feature extraction and emotion detection and classification. For text preparation we use processes of tokenization and segmentation, noise removal and segmentation. We extract features using count vectors and term frequency -inverse document frequency. For classification compare varied machine leaning algorithms. Results show that Linear SVM using Count Vectors accuracy gave an accuracy of 79% which is encouraging. We deduce that we can extract the affective states of the learners automatically from text during their interaction with e-learning environment. This will help in understanding the learners needs and help in enhancing adaptability