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Maximin criterion for item selection in computerized adaptive testing.

Jyun-Hong Chen1, Hsiu-Yi Chao2

  • 1Department of Psychology, National Cheng Kung University, No. 1, University Road, Tainan City, 701401, Taiwan.

Behavior Research Methods
|May 28, 2025
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Summary
This summary is machine-generated.

The MaxiMin Information (MMI) criterion enhances computerized adaptive testing (CAT) by balancing item pool utilization. This new method improves test efficiency and security, especially for high-stakes assessments.

Keywords:
Computerized adaptive testingDecision theoryItem selection rulesMaximin information criterionMaximum Fisher information

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Area of Science:

  • Psychometrics
  • Educational Measurement
  • Computerized Adaptive Testing (CAT)

Background:

  • Information-based item selection rules (ISRs) in CAT, like maximum Fisher information (MFI), often over-utilize highly discriminating items.
  • This leads to unbalanced item pool usage and potential test security issues.

Purpose of the Study:

  • Introduce and evaluate the MaxiMin Information (MMI) criterion for item selection in CAT.
  • Assess MMI's ability to balance item pool utilization while maintaining trait estimation precision.

Main Methods:

  • Developed the MMI criterion based on decision theory, selecting items with maximum minimum information within the current confidence interval (CI) of the trait level.
  • Conducted five simulation studies under various conditions to compare MMI with other ISRs.

Main Results:

  • MMI demonstrates comparable trait estimation precision to existing ISRs.
  • MMI significantly improves item pool utilization balance.
  • MMI adapts item selection based on trait estimate precision, favoring less discriminating items for broader CIs and more discriminating items for narrower CIs.

Conclusions:

  • MMI is a promising ISR for CAT, particularly for high-stakes testing, due to its balanced item pool utilization and efficiency.
  • Recommends applying MMI with a 95% confidence level for optimal performance.
  • MMI offers a practical solution for enhancing CAT efficiency and security.