ASSESSMENT OF PERFORMANCES OF VARIOUS MACHINE LEARNING ALGORITHMS DURING AUTOMATED EVALUATION OF DESCRIPTIVE ANSWERS
Journal: ICTACT Journal on Soft Computing (IJSC) (Vol.4, No. 4)Publication Date: 2014-07-01
Authors : C. Sunil Kumar; R. J. Rama Sree;
Page : 781-786
Keywords : Descriptive Answers; Automated Evaluation; LightSIDE; Machine Learning Algorithms;
Abstract
Automation of descriptive answers evaluation is the need of the hour because of the huge increase in the number of students enrolling each year in educational institutions and the limited staff available to spare their time for evaluations. In this paper, we use a machine learning workbench called LightSIDE to accomplish auto evaluation and scoring of descriptive answers. We attempted to identify the best supervised machine learning algorithm given a limited training set sample size scenario. We evaluated performances of Bayes, SVM, Logistic Regression, Random forests, Decision stump and Decision trees algorithms. We confirmed SVM as best performing algorithm based on quantitative measurements across accuracy, kappa, training speed and prediction accuracy with supplied test set.
Other Latest Articles
- Self-attitude structure of the students as a component of determinant system of the personal maturity formation
- Temporal characteristics of metacognitive competence of high school teachers
- Psychological content of the mid-life crisis of personality
- Specificity of the relationship of self-esteem and level of aspiration of young people who are prone to alcohol dependence
- Features of the structure of subjectivity of future teachers at different stages of learning
Last modified: 2014-09-02 13:44:10