2022
DOI: 10.1111/bmsp.12288
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Two efficient selection methods for high‐dimensional CD‐CAT utilizing max‐marginals factor from MAP query and ensemble learning approach

Abstract: Computerized adaptive testing for cognitive diagnosis (CD-CAT) needs to be efficient and responsive in real time to meet practical applications' requirements. For high-dimensional data, the number of categories to be recognized in a test grows exponentially as the number of attributes increases, which can easily cause system reaction time to be too long such that it adversely affects the examinees and thus seriously impacts the measurement efficiency. More importantly, the long-time CPU operations and memory u… Show more

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