Affiliation:
1. Management & Science University, Shah Alam, Malaysia
2. School of Internet of Things Technology, Wuxi Institute of Technology, Wuxi, Jiangsu, China
Abstract
On the basis of studying datasets of students' course scores, we constructed a Bayesian network and undertook probabilistic inference analysis. We selected six requisite courses in computer science as Bayesian network nodes. We determined the order of the nodes based on expert knowledge. Using 356 datasets, the K2 algorithm learned the Bayesian network structure. Then, we used maximum a posteriori probability estimation to learn the parameters. After constructing the Bayesian network, we used the message-passing algorithm to predict and infer the results. Finally, the results of dynamic knowledge inference were presented through a detailed inference process. In the absence of any evidence node information, the probability of passing other courses was calculated. A mathematics course (a basic professional course) was chosen as the evidence node to dynamically infer the probability of passing other courses. Over time, the probability of passing other courses greatly improved, and the inference results were consistent with the actual values and can thus be visualized and applied to an actual school management system.
Funder
Ministry of Education of the People's Republic of China
Subject
General Engineering,General Mathematics
Reference24 articles.
1. Building classifiers using Bayesian networks;N. Friedman
2. Review of expert system methods for uncertain information processing;Z. Shi;Systems Engineering and Electronic Technology,1990
3. Comparison of imprecise reasoning models in expert systems;F. Li;Computer Engineering and Design,1990
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