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Multimodal Data Fusion to Detect Preknowledge Test-Taking Behavior Using Machine Learning.

Kaiwen Man
Published in: Educational and psychological measurement (2023)
In various fields, including college admission, medical board certifications, and military recruitment, high-stakes decisions are frequently made based on scores obtained from large-scale assessments. These decisions necessitate precise and reliable scores that enable valid inferences to be drawn about test-takers. However, the ability of such tests to provide reliable, accurate inference on a test-taker's performance could be jeopardized by aberrant test-taking practices, for instance, practicing real items prior to the test. As a result, it is crucial for administrators of such assessments to develop strategies that detect potential aberrant test-takers after data collection. The aim of this study is to explore the implementation of machine learning methods in combination with multimodal data fusion strategies that integrate bio-information technology, such as eye-tracking, and psychometric measures, including response times and item responses, to detect aberrant test-taking behaviors in technology-assisted remote testing settings.
Keyphrases
  • machine learning
  • healthcare
  • primary care
  • electronic health record
  • emergency department
  • big data
  • pain management
  • chronic pain
  • social media
  • health information
  • posttraumatic stress disorder
  • psychometric properties