A Self-learning Ability Assessment Method Based on Weight-Optimised Dfferential Evolutionary Algorithm

Zhiwei Zhu
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Abstract

INTRODUCTION: The research on the method of cultivating college students' autonomous ability based on experiential teaching is conducive to college students' change of learning mode and learning thinking, improving the utilisation rate of educational resources, as well as the reform of education.OBJECTIVES: Addressing the current problems of unquantified analyses, lack of breadth, and insufficient development strategies in the methods used to develop independent learning skills in university students.METHODS: This paper proposes an intelligent optimisation algorithm for the cultivation of college students' independent learning ability in experiential teaching. Firstly, the characteristics and elements of college students' independent learning are analysed, while the strategy of cultivating college students' independent learning ability in experiential teaching is proposed; then, the weight optimization method of cultivating college students' independent learning ability based on experiential teaching is proposed by using the improved intelligent optimization algorithm; finally, the validity and feasibility of the proposed method are verified through experimental analysis.RESULTS: The results show that the proposed method has a wider range of culture effects.CONCLUSION: Addressing the problem of poor generalisation in the development of independent learning skills among university students.
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基于权重优化梯度进化算法的自学能力评估方法
引言:研究基于体验式教学的大学生自主能力培养方法,有利于大学生转变学习方式和学习思维,提高教育资源的利用率,有利于教育教学改革:解决当前大学生自主学习能力培养方法中存在的分析不量化、缺乏广度、培养策略不足等问题。方法:本文提出了体验式教学中大学生自主学习能力培养的智能优化算法。首先,分析了大学生自主学习的特点和要素,提出了在体验式教学中培养大学生自主学习能力的策略;然后,利用改进后的智能优化算法,提出了基于体验式教学的大学生自主学习能力培养的权重优化方法;最后,通过实验分析验证了所提方法的有效性和可行性。结果:结果表明,所提出的方法具有较广泛的培养效果。结论:解决了大学生自主学习能力培养中普遍性差的问题。
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