Quality evaluation method of agricultural talents training based on improved random forest algorithm

Qi Wang, Guanghai Li, Jingang Song
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Abstract

At present, the evaluation mechanism of higher education is still relatively old, with too much emphasis on theoretical assessment and insufficient assessment on practical application. Because the assessment mechanism is too single, it limits academic freedom and innovation. The inflexible educational mechanism will also lead to the shift of the focus of personnel training. Therefore, we must improve the evaluation mechanism of higher education. In this paper, the posterior probability is selected as an important part of the cost function. The cost function is combined with the Gini coefficient, which is the feature division index of random forests It is to achieve the purpose of considering the sample misclassification cost when the random forests weak classifier selects features. Squaring can increase the cost of misclassifying the actual class as a sample. It can also realize the evaluation of educational resources and verify the experimental results by comparing the performance of a single model. The results prove that this model is more suitable for evaluating the education and training of agricultural talents. It can also measure the application value of resources to maximize the use effect of educational resources.
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基于改进随机森林算法的农业人才培养质量评价方法
目前,高等教育评价机制还比较陈旧,过于强调理论评价,对实际应用评价不足。由于考核机制过于单一,限制了学术自由和创新。教育机制的僵化也会导致人才培养重点的转移。因此,必须完善高等教育评价机制。本文选择后验概率作为代价函数的重要组成部分。将代价函数与随机森林的特征划分指标基尼系数相结合,以达到随机森林弱分类器在选择特征时考虑样本误分类代价的目的。平方会增加误将实际类分类为样本的代价。它还可以实现对教育资源的评价,并通过比较单个模型的性能来验证实验结果。结果表明,该模型更适合于评价农业人才的教育与培养。它还可以衡量资源的应用价值,使教育资源的使用效果最大化。
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