Fuzzy learning performance assessment based on decision making under internal uncertainty

S. Prokhorov, I. Kulikovskikh
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引用次数: 5

Abstract

The paper delves into decision making with partial knowledge focused on students' behaviour in multiple-choice testing. To address to this problem, we first provided a binary knowledge model and, then, relaxing some assumptions, allowed for the more realistic framework of partial knowledge which, in turn, adds uncertainty to the assessment of students' knowledge due to their incentive to make a guess in multiple-choice testing. The aim of this paper is to propose a fuzzy assessment model formalised according to Reiter's Theory of Diagnosis to reduce this uncertainty and to draw a distinction between the level of students' ability and the degree of guessing. The provided assessment model was tested on modelled answers with respect to the knowledge frameworks and validated in a real-world context. The findings of this research present the fuzzy learning performance assessment model which may enable a teacher to estimate the level of partial knowledge and, thus, to specify a student's score as well as the results of computational experiments that confirm the validity of the theoretical outcomes.
基于内部不确定性决策的模糊学习绩效评价
本文以学生在多项选择题测试中的行为为重点,探讨了部分知识下的决策问题。为了解决这个问题,我们首先提供了一个二元知识模型,然后放宽了一些假设,允许更现实的部分知识框架,这反过来又增加了学生知识评估的不确定性,因为他们在多项选择测试中有猜测的动机。本文的目的是根据Reiter的诊断理论提出一个模糊评估模型,以减少这种不确定性,并在学生的能力水平和猜测程度之间划出界限。所提供的评估模型在知识框架的建模答案上进行了测试,并在现实环境中进行了验证。本研究的结果提出了模糊学习绩效评估模型,该模型可以使教师估计部分知识的水平,从而指定学生的分数,以及计算实验的结果,以确认理论结果的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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