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首页> 外文期刊>The British journal of mathematical and statistical psychology >The assessment of knowledge and learning in competence spaces: The gain-loss model for dependent skills
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The assessment of knowledge and learning in competence spaces: The gain-loss model for dependent skills

机译:能力空间中知识和学习的评估:依赖技能的增益损失模型

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The gain-loss model (GaLoM) is a formal model for assessing knowledge and learning. In its original formulation, the GaLoM assumes independence among the skills. Such an assumption is not reasonable in several domains, in which some preliminary knowledge is the foundation for other knowledge. This paper presents an extension of the GaLoM to the case in which the skills are not independent, and the dependence relation among them is described by a well-graded competence space. The probability of mastering skills at the pretest is conditional on the presence of all skills on which s depends. The probabilities of gaining or losing skill s when moving from pretest to posttest are conditional on the mastery of s at the pretest, and on the presence at the posttest of all skills on which s depends. Two formulations of the model are presented, in which the learning path is allowed to change from pretest to posttest or not. A simulation study shows that models based on the true competence space obtain a better fit than models based on false competence spaces, and are also characterized by a higher assessment accuracy. An empirical application shows that models based on pedagogically sound assumptions about the dependencies among the skills obtain a better fit than models assuming independence among the skills.
机译:增益损失模型(GaloM)是评估知识和学习的正式模型。在其原始配方中,Galom在技能中担任独立性。这种假设在若干域中不合理,其中一些初步知识是其他知识的基础。本文介绍了龙门的延伸,其中技能不是独立的情况,并且它们之间的依赖关系是由渐变的能力空间描述的。在预测试中掌握技能的概率是有条件的,其中包括所有所取决金的所有技能。在从预测试到后测试时获得或丢失技能的概率是在预测试的掌握上的条件,并且在其所取决于所有技能的后测试。提出了模型的两种制剂,其中允许学习路径从预测试到后测试。仿真研究表明,基于真正能力空间的模型比基于虚假能力空间的模型获得更好的适合,并且还具有更高的评估准确性。实证应用表明,基于教学上的模型对技能之间的依赖性的依赖性的模型获得比在技能中具有独立性的模型更好的合适。

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