Uncovering the predictive effect of behaviours on self-directed learning ability

IF 6.7 1区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH British Journal of Educational Technology Pub Date : 2024-01-08 DOI:10.1111/bjet.13427
Bowen Liu, Yonghe Wu, Hang Shu, Yongpeng Cui, Can Zuo, Wenhao Li
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Abstract

Self-direction has become an important skill in the 21st century. To cultivate learners with a high level of self-direction, it is necessary to diagnose their self-directed learning (SDL) ability. This study diagnosed and predicted learners' SDL ability based on their actual SDL behaviours. The study was performed in a self-directed 3D design class lasting 90 minutes. A total of 193 middle school students participated in the study. The results of the Pearson correlation analysis (p < 0.001) showed that the reported perception of SDL ability was significantly correlated with SDL behaviours. The results of the hierarchical multiple linear regression analysis showed that the SDL behaviours explained 84.9% of the variance in SDL ability (adjusted R2 = 0.849, p < 0.001). Therefore, SDL behaviours had significant predictive effects on the reported perception of SDL ability. Moreover, based on the random forest algorithm, the study built an SDL ability prediction model with high performance (accuracy = 0.83, precision = 0.82, recall = 0.84) using SDL behaviours as features. The study provides evidence for the design of effective strategies to enhance SDL ability and promote SDL behaviours.

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揭示行为对自主学习能力的预测作用
自我导向已成为 21 世纪的一项重要技能。要培养具有高水平自主学习能力的学习者,就必须诊断他们的自主学习能力(SDL)。本研究根据学习者的实际自主学习行为来诊断和预测学习者的自主学习能力。这项研究是在一堂持续 90 分钟的自主三维设计课上进行的。共有 193 名中学生参与了研究。皮尔逊相关分析(p < 0.001)结果表明,报告的 SDL 能力感知与 SDL 行为显著相关。分层多元线性回归分析结果显示,可持续发展学习行为解释了 84.9% 的可持续发展学习能力方差(调整后 R2 = 0.849,p < 0.001)。因此,可持续发展学习行为对报告的可持续发展学习能力具有显著的预测作用。此外,基于随机森林算法,本研究以 SDL 行为为特征,建立了一个 SDL 能力预测模型,该模型具有较高的性能(准确率 = 0.83,精确率 = 0.82,召回率 = 0.84)。为了培养具有高水平自主学习能力的学习者,有必要对学习者的自主学习(SDL)能力进行诊断。SDL是个人内在属性和外在自主行为的结合。基于随机森林算法,本研究以SDL行为为特征,建立了一个性能较高的SDL能力预测模型。研究结果表明,教师可以设计有效的策略来促进SDL行为,从而达到提高学习者SDL能力的目的。
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来源期刊
British Journal of Educational Technology
British Journal of Educational Technology EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
15.60
自引率
4.50%
发文量
111
期刊介绍: BJET is a primary source for academics and professionals in the fields of digital educational and training technology throughout the world. The Journal is published by Wiley on behalf of The British Educational Research Association (BERA). It publishes theoretical perspectives, methodological developments and high quality empirical research that demonstrate whether and how applications of instructional/educational technology systems, networks, tools and resources lead to improvements in formal and non-formal education at all levels, from early years through to higher, technical and vocational education, professional development and corporate training.
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