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博士後演講公告

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Optimal Designs in Computerized Adaptive Testing

  • 2021-01-20 (Wed.), 14:00 PM
  • 中研院-統計所 6005會議室(環境變遷研究大樓A棟)
  • 茶 會:下午15:00統計所6005會議室(環境變遷研究大樓A棟)
  • Prof. Jyun-Hong Chen (陳俊宏 教授)
  • Department of Psychology, Soochow University (東吳大學心理學系)

Abstract

Computerized adaptive testing (CAT) using information-based item selection rules (ISR) (e.g., maximum Fisher information) shows an improvement in test efficiency over linear testing but also leads to the undesirable result of unbalanced item usage. To achieve the optimal CAT design, the concept of global adaptiveness (GA) (Chen, Chao, & Chen, 2020) is introduced. While traditional CATs consider how to maximize information at a single-item administration, GA-based CATs additionally consider how to maximize test information for all examinees. The GA is further applied to develop ISRs, including the dynamic Stratification method based on Dominance Curves (SDC) (heuristic approach) and Integer Linear Programing Approach based on Real-time Test Data (IPRD) (0-1 programming approach). Specifically, these ISRs utilize information regarding real-time test data to optimize each item administration from a comprehensive perspective. According to simulation studies, SDC and IPRD can efficiently improve both trait estimation precision and item pool usage while satisfying all test requirements in most test scenarios.

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