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使用人工蜂群(ABC)优化算法优化用于英语教学质量评估(ETQE)的决策树。

Optimizing decision trees for English Teaching Quality Evaluation (ETQE) using Artificial Bee Colony (ABC) optimization.

作者信息

Cui Yingying

机构信息

Fundamental Education Department, Tourism College of Changchun University, Changchun 130000, Jilin, China.

出版信息

Heliyon. 2023 Aug 18;9(8):e19274. doi: 10.1016/j.heliyon.2023.e19274. eCollection 2023 Aug.

Abstract

Changes in educational systems and English teaching strategies have increased the need for automatic methods for English Teaching Quality Evaluation (ETQE). A practical model for ETQE applies in different fields, determines the most relevant factors in teaching quality (TQ), and has optimal performance in different conditions. This paper presents a new method based on Artificial Intelligence (AI) and meta-heuristic algorithms to solve the ETQE problem. The proposed method performs the prediction process in two phases: "determination of related indicators" and "quality prediction". During the first phase, after introducing a set of 24 candidate indicators, an optimal subset of them having maximum correlation with ETQE and minimum redundancy are selected using Artificial Bee Colony (ABC) algorithm. In the second phase of the proposed method, a Classification and Regression Tree (CART) model optimized by ABC are applied to predict ETQ based on the indicators determined in the first phase. In this learning model, split points of decision nodes are determined by ABC in a way that the prediction accuracy would be maximized. The performance of the proposed method has been evaluated in two different teaching environments. The performance of the proposed method has been evaluated in two different teaching environments. The studied teaching environments are face-to-face (FF) and online classes that were held for middle school and university students, respectively. Based on the obtained results, the proposed method can predict the ETQ with an accuracy of more than 98.99% in both tested scenarios, which results in an increase of at least 1.11% compared to the previous methods. The efficiency of the proposed model in both studied scenarios prove the generality of this method to be used in real-world applications.

摘要

教育系统和英语教学策略的变化增加了对英语教学质量评估(ETQE)自动方法的需求。一种实用的ETQE模型适用于不同领域,确定教学质量(TQ)中最相关的因素,并在不同条件下具有最佳性能。本文提出了一种基于人工智能(AI)和元启发式算法的新方法来解决ETQE问题。所提出的方法分两个阶段进行预测过程:“相关指标的确定”和“质量预测”。在第一阶段,在引入一组24个候选指标后,使用人工蜂群(ABC)算法选择与ETQE具有最大相关性且冗余最小的最优子集。在所提出方法的第二阶段,应用由ABC优化的分类回归树(CART)模型,根据第一阶段确定的指标来预测ETQ。在这个学习模型中,决策节点的分割点由ABC确定,以使预测准确性最大化。所提出方法的性能在两种不同的教学环境中进行了评估。所研究的教学环境分别是面向中学生的面对面(FF)课程和面向大学生的在线课程。根据所得结果,所提出的方法在两种测试场景中都能以超过98.99%的准确率预测ETQ,与之前的方法相比,准确率至少提高了1.11%。所提出模型在两种研究场景中的效率证明了该方法在实际应用中的通用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ac56/10469990/11fdeb975382/gr1.jpg

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