TY - GEN
T1 - AI-Driven Intelligent Assessment for Higher Education
T2 - 2026 IEEE International Conference on Power, Electronics and Green Energy, ICPEGE 2026
AU - Han, Xu
AU - Shang, Peng
AU - Lin, Yuan
AU - Peng, Tongtong
AU - Wang, Ruoming
N1 - Publisher Copyright:
© 2026 IEEE.
PY - 2026
Y1 - 2026
N2 - This article focuses on the implementation of "intelligent evaluation"in higher education teaching reform. Based on a computer systems perspective, it constructs an integrated data-model-feedback implementation path. Initially, it builds a teaching behavior data pipeline, connecting LMS/exam and interaction logs to achieve a complete process covering collection, cleaning, desensitization, feature engineering, and feature repository management. Secondly, at the model level, it achieves multi-model collaboration through sequence modeling (Transformer/TCN) and graph modeling (course knowledge graph/peer learning graph). It also utilizes calibration (temperature scaling/ECE) and uncertainty assessment (MC-Dropout/Deep Learning). Ensembles maintains the reliability of teaching decisions; it again relies on streaming inference and feature snapshots to achieve minute-level online evaluation and personalized feedback, and uses A/B and quasi-experimental designs to assess teaching effectiveness; in terms of systems engineering, it relies on containerization and service mesh to achieve scalable deployment, and uses feature drift/concept drift monitoring and small-step rollback to ensure model governance and traceable auditing. Compared with baseline manual and offline practices, this solution has achieved significant optimization in key indicators such as homework grading latency, learning effectiveness improvement rate, feedback timeliness, and teacher workload, and also highlights the reusability of end-to-end MLOps in education scenarios.
AB - This article focuses on the implementation of "intelligent evaluation"in higher education teaching reform. Based on a computer systems perspective, it constructs an integrated data-model-feedback implementation path. Initially, it builds a teaching behavior data pipeline, connecting LMS/exam and interaction logs to achieve a complete process covering collection, cleaning, desensitization, feature engineering, and feature repository management. Secondly, at the model level, it achieves multi-model collaboration through sequence modeling (Transformer/TCN) and graph modeling (course knowledge graph/peer learning graph). It also utilizes calibration (temperature scaling/ECE) and uncertainty assessment (MC-Dropout/Deep Learning). Ensembles maintains the reliability of teaching decisions; it again relies on streaming inference and feature snapshots to achieve minute-level online evaluation and personalized feedback, and uses A/B and quasi-experimental designs to assess teaching effectiveness; in terms of systems engineering, it relies on containerization and service mesh to achieve scalable deployment, and uses feature drift/concept drift monitoring and small-step rollback to ensure model governance and traceable auditing. Compared with baseline manual and offline practices, this solution has achieved significant optimization in key indicators such as homework grading latency, learning effectiveness improvement rate, feedback timeliness, and teacher workload, and also highlights the reusability of end-to-end MLOps in education scenarios.
KW - Artificial intelligence
KW - MLOps
KW - feature engineering
KW - intelligent evaluation
KW - model calibration
KW - personalized instruction
KW - uncertainty assessment
UR - https://www.scopus.com/pages/publications/105037470195
U2 - 10.1109/ICPEGE67691.2026.11451295
DO - 10.1109/ICPEGE67691.2026.11451295
M3 - 会议稿件
AN - SCOPUS:105037470195
T3 - 2026 IEEE International Conference on Power, Electronics and Green Energy, ICPEGE 2026
SP - 1599
EP - 1604
BT - 2026 IEEE International Conference on Power, Electronics and Green Energy, ICPEGE 2026
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 28 January 2026 through 30 January 2026
ER -