Application of Random Trees Model in Online Learning Perspective in Evaluating Learners’ Behavioral Engagement

Author:

Wu Meiping1ORCID,Tang Tao2ORCID

Affiliation:

1. School of Stomatology, Guangzhou Health Science College, Guangzhou, Guangdong 510925, China

2. College of Innovation and Entrepreneurship Education, Guangzhou Health Science College, Guangzhou, Guangdong 510925, China

Abstract

Under digital technology, the vigorous development of online education has also encountered challenges of different degrees, such as the high dropout rate of learners, the low completion rate of courses, and the loss of users. Learning engagement has not yet formed an effective assessment system. Based on an exploration of the core of learning activity engagement, this research evaluates the state of learning activity engagement utilizing learners’ adaptive adjustment processes of information exchange activities and a random trees model. A combined classifier is a random tree. Random trees are a combined classifier. Its main idea is to build multiple relatively independent decision tree classifiers based on two random processes, and then obtain the final prediction results by voting all decision trees. The traditional random trees model is improved by weighted calculation and aggregation calculation. After experimental analysis, it can be found that the highest can reach more than 80%, which proves that the improvement of the weighted value has a good reflection on the random trees model, and the accuracy rate is increased by 65.2% after the weighted improvement. Overall, the performance of the improved random trees model is improved by 67.3%.

Funder

Bureau of Education of Guangzhou Municipality

Publisher

Hindawi Limited

Subject

Computer Networks and Communications,Computer Science Applications

Reference28 articles.

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