Comput. Syst. Sci. Eng. | 2021

Brain Storm Optimization Based Clustering for Learning Behavior Analysis

 
 
 
 

Abstract


Recently, online learning platforms have proven to help people gain knowledge more conveniently. Since the outbreak of COVID-19 in 2020, online learning has become a mainstream mode, as many schools have adopted its format. The platforms are able to capture substantial data relating to the students learning activities, which could be analyzed to determine relationships between learning behaviors and study habits. As such, an intelligent analysis method is needed to process efficiently this high volume of information. Clustering is an effect data mining method which discover data distribution and hidden characteristic from uncharacterized online learning data. This study proposes a clustering algorithm based on brain storm optimization (CBSO) to categorize students according to their learning behaviors and determine their characteristics. This enables teaching to be tailored to taken into account those results, thereby, improving the education quality over time. Specifically, we use the individual of CBSO to represent the distribution of students and find the optimal one by the operations of convergence and divergence. The experiments are performed on the 104 students online learning data, and the results show that CBSO is feasible and efficient.

Volume 39
Pages 211-219
DOI 10.32604/csse.2021.016693
Language English
Journal Comput. Syst. Sci. Eng.

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