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Computer-based Adaptive Test Development Using Fuzzy Item Response Theory to Estimate Student Ability

机译:基于计算机的自适应测试开发,采用模糊物品响应理论估算学生能力

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The field of computing has developed so rapidly. Various theories of computational evolution to support human needs are continually being pursued; one of them is the field of education, especially in terms of teaching, testing, and evaluation of exam results. This study aims to develop computerized adaptive tests (CAT) to measure the student's abilities. Students will be measured for their cognitive abilities in Mathematics and Science subjects. It starts with developing a question bank that has been tested with 720 students to classify items based on its characteristic, i.e., easy, medium, and challenging. This research uses the item response theory approach with the model 2 logic parameters (2PL), namely item difficulty and item difference power. The selection of test items for each participant will depend on the response of the previous answer. Fuzzy algorithm is used in analyzing test items through four stages, namely fuzzification, implications, inference, and defuzzification. Meanwhile, to measure the ability of test-takers, the maximum likelihood estimation method, MLE, is used. Based on the testing of 73 students, it was found that each student received a different test item, both in the number of questions and the level of difficulty of the questions, according to student's abilities. The results of the CAT program's measurement of the test taker's ability estimation were stated to be more effective compared to conventional methods, as indicated by the average test length of 15 items compared to traditional tests, which had a length of 50 items. Therefore, the CAT program with the fuzzy item response theory can be used as support to measure students' abilities.
机译:计算领域已经发展得如此迅速。不断追求以支持人类需求的各种计算演化理论;其中一个是教育领域,特别是在教学,测试和考试结果的评估方面。本研究旨在开发计算机化的自适应测试(猫)以衡量学生的能力。学生将以数学和科学科目的认知能力来衡量。它始于开发一个问题银行,该银行已经用720名学生进行了测试,以基于其特征,即简单,中等和具有挑战性地对项目进行分类。本研究使用项目响应理论方法与模型2逻辑参数(2PL),即项目难度和项目差异功率。每个参与者的测试项目的选择将取决于前一个答案的响应。模糊算法用于通过四个阶段分析测试项目,即模糊化,含义,推理和Defuzzzification。同时,为了测量测试者的能力,使用最大似然估计方法MLE。根据73名学生的测试,发现每个学生都收到了不同的测试项目,据学生的能力统计,两者都在问题的数量和问题难度水平。与传统方法相比,猫计划测量的测试接受能力估算的测量结果更有效,与传统测试相比,与传统测试相比,平均测试长度为50件。因此,具有模糊物品响应理论的猫计划可以用作衡量学生的能力。

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