Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
383426 | Expert Systems with Applications | 2012 | 15 Pages |
E-learning systems output a huge quantity of data on a learning process. However, it takes a lot of specialist human resources to manually process these data and generate an assessment report. Additionally, for formative assessment, the report should state the attainment level of the learning goals defined by the instructor.This paper describes the use of the granular linguistic model of a phenomenon (GLMP) to model the assessment of the learning process and implement the automated generation of an assessment report. GLMP is based on fuzzy logic and the computational theory of perceptions. This technique is useful for implementing complex assessment criteria using inference systems based on linguistic rules. Apart from the grade, the model also generates a detailed natural language progress report on the achieved proficiency level, based exclusively on the objective data gathered from correct and incorrect responses. This is illustrated by applying the model to the assessment of Dijkstra’s algorithm learning using a visual simulation-based graph algorithm learning environment, called GRAPHs.
► We design a granular linguistic model of the computer-assisted learning assessment process. ► We design an expert system to automatically assess an algorithm learning process through visual simulation. ► Formative assessment reports in natural language are generated automatically. ► We propose a method for calculating how informative a summary containing importance-discriminated data is. ► Informativeness is used to choose the summary to generate the learning progress report.