Application Big Data and Intelligent Optimization Algorithms on Teaching Evaluation Method for Higher Vocational Institutions

Meijuan Huang
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Abstract

INTRODUCTION: The optimization of the teaching evaluation system, as an essential part of teaching reform in higher vocational colleges and universities, is conducive to the development of higher vocational colleges and universities' disciplines, making the existing teaching more standardized.OBJECTIVES: Aiming at the problems of inefficiency, incomplete index system, and low assessment accuracy in evaluation methods of higher vocational colleges and universities.METHODS: Proposes a teaching evaluation method for higher vocational colleges and universities with a big data mining algorithm and an intelligent optimization algorithm. Firstly, the teaching evaluation index system of higher vocational colleges and universities is downgraded and analyzed by using principal component analysis; then, the random forest hyperparameters are optimized by the grey wolf optimization algorithm, and the teaching evaluation model of higher vocational colleges and universities is constructed; finally, the validity and stability of the proposed method is verified by simulation experimental analysis.RESULTS: The results show that the proposed method improves the accuracy of the evaluation model.CONCLUSION: Solves the problems of low evaluation accuracy, incomplete system, and low efficiency of teaching evaluation methods in higher vocational colleges.
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大数据与智能优化算法在高职院校教学评价方法中的应用
引言:教学评价体系的优化作为高职院校教学改革的重要组成部分,有利于高职院校学科的发展,使现有的教学更加规范:针对高职院校评价方法中存在的效率不高、指标体系不完整、评价准确度低等问题。方法:提出一种大数据挖掘算法和智能优化算法的高职院校教学评价方法。首先,利用主成分分析法对高职院校教学评价指标体系进行降维分析;然后,利用灰狼优化算法对随机森林超参数进行优化,构建高职院校教学评价模型;最后,通过仿真实验分析验证了所提方法的有效性和稳定性。结果:结果表明,所提方法提高了评价模型的准确性。结论:解决了高职院校教学评价方法存在的评价准确性低、体系不完整、效率不高等问题。
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