应用机器学习和 SHAP 方法识别初中生数学素养成绩的关键影响因素。

IF 2.8 3区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Ying Huang, Ying Zhou, Jihe Chen, Danyan Wu
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引用次数: 0

摘要

2022 年国际学生评估项目(PISA)扫盲评估显示,大多数经合组织国家的数学成绩大幅下降,下降幅度约为上一轮评估的三倍。值得注意的是,香港、澳门、台北、新加坡、日本和韩国在所有参与国家或经济体中排名前六,其中台北、新加坡、日本和韩国的表现也有所改善。鉴于中学生数学素养的影响因素受到广泛关注,本文采用机器学习和SHapley Additive exPlanations(SHAP)方法,对PISA 2022数据集中来自东亚六个教育体系的34968个样本和151个特征进行分析,旨在找出影响中学生数学素养的关键因素。首先,XGBoost 模型对数学素养成绩的预测准确率最高。其次,有 15 个变量被确定为学生数学素养的重要预测因素,尤其是数学自我效能感(MATHEFF)和预期职业状况(BSMJ)等变量。第三,数学自我效能感被认为是影响最大的因素。第四,影响学生数学素养的因素因人而异,包括主要影响因素、影响方向(积极或消极)以及影响程度。最後,我們根據研究結果提出四項建議,以提升中學生的數學素養。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Machine Learning and SHAP Method to Identify Key Influences on Middle-School Students' Mathematics Literacy Performance.

The PISA 2022 literacy assessment highlights a significant decline in math performance among most OECD countries, with the magnitude of this decline being approximately three times that of the previous round. Remarkably, Hong Kong, Macao, Taipei, Singapore, Japan, and Korea ranked in the top six among all participating countries or economies, with Taipei, Singapore, Japan, and Korea also demonstrating improved performance. Given the widespread concern about the factors influencing secondary-school students' mathematical literacy, this paper adopts machine learning and the SHapley Additive exPlanations (SHAP) method to analyze 34,968 samples and 151 features from six East Asian education systems within the PISA 2022 dataset, aiming to pinpoint the crucial factors that affect middle-school students' mathematical literacy. First, the XGBoost model has the highest prediction accuracy for math literacy performance. Second, 15 variables were identified as significant predictors of mathematical literacy across the student population, particularly variables such as mathematics self-efficacy (MATHEFF) and expected occupational status (BSMJ). Third, mathematics self-efficacy was determined to be the most influential factor. Fourth, the factors influencing mathematical literacy vary among individual students, including the key influencing factors, the direction (positive or negative) of their impact, and the extent of this influence. Finally, based on our findings, four recommendations are proffered to enhance the mathematical literacy performance of secondary-school students.

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来源期刊
Journal of Intelligence
Journal of Intelligence Social Sciences-Education
CiteScore
2.80
自引率
17.10%
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0
审稿时长
11 weeks
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