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首页> 外文期刊>Journal of research in science teaching >From substitution to redefinition: A framework of machine learning-based science assessment
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From substitution to redefinition: A framework of machine learning-based science assessment

机译:从替代到重新定义:基于机器学习的科学评估框架

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摘要

This study develops a framework to conceptualize the use and evolution of machine learning (ML) in science assessment. We systematically reviewed 47 studies that applied ML in science assessment and classified them into five categories: (a) constructed response, (b) essay, (c) simulation, (d) educational game, and (e) inter-discipline. We compared the ML-based and conventional science assessments and extracted 12 critical characteristics to map three variables in a three-dimensional framework:construct,functionality, andautomaticity. The 12 characteristics used to construct a profile for ML-based science assessments for each article were further analyzed by a two-step cluster analysis. The clusters identified for each variable were summarized into four levels to illustrate the evolution of each. We further conducted cluster analysis to identify four classes of assessment across the three variables. Based on the analysis, we conclude that ML has transformed-but notyetredefined-conventional science assessment practice in terms of fundamental purpose, the nature of the science assessment, and the relevant assessment challenges. Along with the three-dimensional framework, we propose five anticipated trends for incorporating ML in science assessment practice for future studies: addressing developmental cognition, changing the process of educational decision making, personalized science learning, borrowing 'good' to advance 'good', and integrating knowledge from other disciplines into science assessment.
机译:本研究开发了一个框架,概念化机器学习(ML)在科学评估中的使用和演变。我们系统地审查了47项研究,将ML应用于科学评估,并将其分为五类:(a)构建的响应,(b)录制,(c)模拟,(d)教育游戏,(e)间学科互动。我们比较了ML的传统科学评估,并提取了12个关键特征来映射三维框架中的三个变量:构造,功能,和自象性。通过两步聚类分析进一步分析了用于构建每种物品的ML的科学评估曲线的12个特征。识别每个变量的簇总结为四个级别以说明每个的演变。我们进一步进行了集群分析,以识别三个变量的四类评估。根据分析,我们得出结论,在基本目的,科学评估的本质和相关评估挑战的基础上,ML已经转变为但尚未进行的常规科学评估实践。随着三维框架,我们提出了五个预期的趋势,用于将ML纳入科学评估实践中的未来研究:解决发展认知,改变教育决策过程,个性化科学学习,借用“善”推进“好”,并将其他学科的知识集成到科学评估中。

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