Knowledge concept recognition in the learning brain via fMRI classification

Wenxin Zhang, Yiping Zhang, Liqian Sun, Yupei Zhang, Xuequn Shang

Research output: Contribution to journalArticlepeer-review

Abstract

Knowledge concept recognition (KCR) aims to identify the concepts learned in the brain, which has been a longstanding area of interest for learning science and education. While many studies have investigated object recognition using brain fMRIs, there are limited research on identifying specific knowledge points within the classroom. In this paper, we propose to recognize the knowledge concepts in computer science by classifying the brain fMRIs taken when students are learning the concepts. More specifically, this study made attempts on two representation strategies, i.e., voxel and time difference. Based on the representations, we evaluated traditional classifiers and the combination of CNN and LSTM for KCR. Experiments are conducted on a public dataset collected from 25 students and teachers in a computer science course. The evaluations of classifying fMRI segments show that the used classifiers all can attain a good performance when using the time-difference representation, where the CNN-LSTM model reaches the highest accuracy. This research contributes to the understanding of human learning and supports the development of personalized learning.

Original languageEnglish
Article number1499629
JournalFrontiers in Neuroscience
Volume19
DOIs
StatePublished - 2025

Keywords

  • brain identification
  • deep learning
  • fMRI classification
  • knowledge concept recognition
  • learning science

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