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Main Authors: Huang, Qionghao, Lu, Lingnuo, Wu, Xuemei, Jiang, Fan, Wang, Xizhe, Wang, Xun
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.13092
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author Huang, Qionghao
Lu, Lingnuo
Wu, Xuemei
Jiang, Fan
Wang, Xizhe
Wang, Xun
author_facet Huang, Qionghao
Lu, Lingnuo
Wu, Xuemei
Jiang, Fan
Wang, Xizhe
Wang, Xun
contents Adaptive Curriculum Sequencing (ACS) is essential for personalized online learning, yet current approaches struggle to balance complex educational constraints and maintain optimization stability. This paper proposes a Memetic Walrus Optimizer (MWO) that enhances optimization performance through three key innovations: (1) an expert-guided strategy with aging mechanism that improves escape from local optima; (2) an adaptive control signal framework that dynamically balances exploration and exploitation; and (3) a three-tier priority mechanism for generating educationally meaningful sequences. We formulate ACS as a multi-objective optimization problem considering concept coverage, time constraints, and learning style compatibility. Experiments on the OULAD dataset demonstrate MWO's superior performance, achieving 95.3% difficulty progression rate (compared to 87.2% in baseline methods) and significantly better convergence stability (standard deviation of 18.02 versus 28.29-696.97 in competing algorithms). Additional validation on benchmark functions confirms MWO's robust optimization capability across diverse scenarios. The results demonstrate MWO's effectiveness in generating personalized learning sequences while maintaining computational efficiency and solution quality.
format Preprint
id arxiv_https___arxiv_org_abs_2506_13092
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Memetic Walrus Algorithm with Expert-guided Strategy for Adaptive Curriculum Sequencing
Huang, Qionghao
Lu, Lingnuo
Wu, Xuemei
Jiang, Fan
Wang, Xizhe
Wang, Xun
Artificial Intelligence
Machine Learning
Adaptive Curriculum Sequencing (ACS) is essential for personalized online learning, yet current approaches struggle to balance complex educational constraints and maintain optimization stability. This paper proposes a Memetic Walrus Optimizer (MWO) that enhances optimization performance through three key innovations: (1) an expert-guided strategy with aging mechanism that improves escape from local optima; (2) an adaptive control signal framework that dynamically balances exploration and exploitation; and (3) a three-tier priority mechanism for generating educationally meaningful sequences. We formulate ACS as a multi-objective optimization problem considering concept coverage, time constraints, and learning style compatibility. Experiments on the OULAD dataset demonstrate MWO's superior performance, achieving 95.3% difficulty progression rate (compared to 87.2% in baseline methods) and significantly better convergence stability (standard deviation of 18.02 versus 28.29-696.97 in competing algorithms). Additional validation on benchmark functions confirms MWO's robust optimization capability across diverse scenarios. The results demonstrate MWO's effectiveness in generating personalized learning sequences while maintaining computational efficiency and solution quality.
title A Memetic Walrus Algorithm with Expert-guided Strategy for Adaptive Curriculum Sequencing
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2506.13092