To what extend can we predict students' performance? A case study in colleges in South Africa

N. Poh, I. Smythe
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引用次数: 9

Abstract

Student performance depends upon factors other than intrinsic ability, such as environment, socio-economic status, personality and familial-context. Capturing these patterns of influence may enable an educator to ameliorate some of these factors, or for governments to adjust social policy accordingly. In order to understand these factors, we have undertaken the exercise of predicting student performance, using a cohort of approximately 8,000 South African college students. They all took a number of tests in English and Maths. We show that it is possible to predict English comprehension test results from (1) other test results; (2) from covariates about self-efficacy, social economic status, and specific learning difficulties there are 100 survey questions altogether; (3) from other test results + covariates (combination of (1) and (2)); and from (4) a more advanced model similar to (3) except that the covariates are subject to dimensionality reduction (via PCA). Models 1-4 can predict student performance up to a standard error of 13-15%. In comparison, a random guess would have a standard error of 17%. In short, it is possible to conditionally predict student performance based on self-efficacy, socio-economic background, learning difficulties, and related academic test results.
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我们能在多大程度上预测学生的表现?以南非大学为例
学生的表现取决于内在能力以外的因素,如环境、社会经济地位、个性和家庭背景。掌握这些影响模式可以使教育工作者改善其中一些因素,或使政府相应地调整社会政策。为了了解这些因素,我们对大约8000名南非大学生进行了一项预测学生表现的研究。他们都参加了一些英语和数学考试。我们表明,可以通过(1)其他测试结果来预测英语理解测试结果;(2)从自我效能感、社会经济地位和特定学习困难的协变量来看,调查问题共100个;(3)其他检验结果+协变量((1)和(2)的组合);从(4)一个更先进的模型类似于(3),除了协变量受到降维(通过PCA)。模型1-4可以预测学生的表现,标准误差为13-15%。相比之下,随机猜测的标准误差为17%。简而言之,基于自我效能、社会经济背景、学习困难和相关的学术测试结果,有条件地预测学生的表现是可能的。
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