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"Machine Learning Approach for Classifying College Scholastic Ability Test ..."
Jung-Gu Choi et al. (2022)
- Jung-Gu Choi
, Inhwan Ko, Yoonjin Nah, Bora Kim, Yongwan Park, Jihyun Cha, Jongkwan Choi, Sanghoon Han
:
Machine Learning Approach for Classifying College Scholastic Ability Test Levels With Unsupervised Features From Prefrontal Functional Near-Infrared Spectroscopy Signals. IEEE Access 10: 50864-50877 (2022)
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