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Applying graph sampling methods on student model initialization in intelligent tutoring systems
- Publication Year :
- 2016
-
Abstract
- Purpose– In order to initialize a student model in intelligent tutoring systems, some form of initial knowledge test should be given to a student. Since the authors cannot include all domain knowledge in that initial test, a domain knowledge subset should be selected. The paper aims to discuss this issue.Design/methodology/approach– In order to generate a knowledge sample that represents truly a certain domain knowledge, the authors can use sampling algorithms. In this paper, the authors present five sampling algorithms (Random Walk, Metropolis-Hastings Random Walk, Forest Fire, Snowball and Represent algorithm) and investigate which structural properties of the domain knowledge sample are preserved after sampling process is conducted.Findings– The samples that the authors got using these algorithms are compared and the authors have compared their cumulative node degree distributions, clustering coefficients and the length of the shortest paths in a sampled graph in order to find the best one.Originality/value– This approach is original as the authors could not find any similar work that uses graph sampling methods for student modeling.
- Subjects :
- Theoretical computer science
Computer science
Initialization
Machine learning
computer.software_genre
Education
symbols.namesake
Graph sampling
0502 economics and business
Sampling process
computer-based learning
domain knowledge
domain knowledge graph
graph sampling
intelligent tutoring systems
knowledge management
Cluster analysis
business.industry
05 social sciences
050301 education
Random walk
Computer Science Applications
symbols
Domain knowledge
Graph (abstract data type)
050211 marketing
Artificial intelligence
business
0503 education
computer
Gibbs sampling
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....6acd7249df5e6bf7c78d7abf22fe02eb