Computer Science ›› 2026, Vol. 53 ›› Issue (2): 48-56.doi: 10.11896/jsjkx.250800002
• Educational Data Mining Based on Graph Machine Learning • Previous Articles Next Articles
ZHAI Jie, LI Yanhao, CHEN Lexuan, GUO Weibin
CLC Number:
| [1]MURALIDHARAN S,TURUVEKERE SREENIVAS S,JOSHIR,et al.Compact language models via pruning and knowledge distillation[J].Advances in Neural Information Processing Systems,2024,37:41076-41102. [2]GRATTAFIORI A,DUBEY A,JAUHRI A,et al.The llama 3 herd of models[J].arXiv:2407.21783,2024. [3]GUNASEKAR S,ZHANG Y,ANEJA J,et al.Textbooks are all you need[J].arXiv:2306.11644,2023. [4]YANG A,YANG B,ZHANG B,et al.Qwen2.5 technical report[J].arXiv:2412.15115,2024. [5]HU S,TU Y,HAN X,et al.Minicpm:Unveiling the potential ofsmall language models with scalable training strategies[J].ar-Xiv:2404.06395,2024. [6]SHENG Y Q,ZENG W X,TANG J Y,et al.Confusing negative commonsense knowledge generation with hierarchy modeling and LLM-enhanced filtering[J].Information Processing & Ma-nagement,2025,62(3):104060. [7]XIANG J,TAO T,GU Y,et al.Language models meet world models:Embodied experiences enhance language models[J].Advances in Neural Information Processing Systems,2023,36:75392-75412. [8]YAO S,ZHAO J,YU D,et al.React:Synergizing reasoning and acting in language models[C]//International Conference on Learning Representations(ICLR).2023. [9]WANG Z,CAI S,CHEN G,et al.Describe,explain,plan and se-lect:Interactive planning with large language models enables open-world multi-task agents[J].arXiv:2302.01560,2023. [10]XIANG J,LIU G,GU Y,et al.Pandora:Towards general world model with natural language actions and video states[J].arXiv:2406.09455,2024. [11]WU Q,BANSAL G,ZHANG J,et al.Autogen:Enabling next-gen LLM applications via multi-agent conversations[C]//First Conference on Language Modeling.2024. [12]HABLER I,HUANG K,NARAJALA V S,et al.Building a se-cure agentic AI application leveraging A2A protocol[J].arXiv:2504.16902,2025. [13]ZENG G,CHEN X,HU J,et al.Routine:A Structural Planning Framework for LLM Agent System in Enterprise[J].arXiv:2507.14447,2025. [14]CHEN C,WU Y,DAI Q,et al.A survey on graph neural networks and graph transformers in computer vision:A task-oriented perspective[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2024(12):46. [15]HITZLER P,SARKER M.Neuro-symbolic AI=neural+logical+probabilistic AI[J].Neuro-Symbolic Artificial Intelligence:The State of the Art,2022,342:173. [16]YU X,LIU Z,FANG Y,et al.Learning to count isomorphisms with graph neural networks[C]//Proceedings of the AAAI Conference on Artificial Intelligence.2023:4845-4853. [17]TAN F,ZHANG C,LIU L.DyAtGNN:Dynamic AttentionGraph Neural Networks for dynamic graph[J].Knowledge-Based Systems,2025,325:113935. [18]BUTEREZ D,JANET J P,OGLIC D,et al.An end-to-end attention-based approach for learning on graphs[J].Nature Communications,2025,16(1):5244. [19]WU Y,HUANG H,SONG Y,et al.Soft-GNN:towards robust graph neural networks via self-adaptive data utilization[J].Frontiers of Computer Science,2025,19(4):194311. [20]ZHANG T,LIU Y,SHEN Z,et al.Learning from heterogeneity:A dynamic learning framework for hypergraphs[J].IEEE Transactions on Artificial Intelligence,2025,6(6):1513-1528. [21]XIE P Z,LI G J,LI T.Knowledge Tracing Model Based onExercise-Knowledge Point Heterogeneous Graph and Multi-feature Fusion[J].Computer Science,2025,52(3):197-205. [22]CHENG K,PENG L,WANG P,et al.DyGKT:Dynamic Graph Learning for Knowledge Tracing[C]//KDD’24:Proceedings of the 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining.2024. [23]ZHAI J,LI Y H,MENG T X.Exploration and practice of personalized computer laboratory teaching based on decision trees and large models[J].Experimental Technology and Management,2023,40(12):8-15. [24]LI Q Y,XIA W,YIN L A,et al.Privileged Knowledge StateDistillation for Reinforcement Learning-based Educational Path Recommendation[C]//KDD’24:The 30th ACM SIGKDD Conference on Knowledge Discovery and Data Mining.2024. [25]Education Dialogue Dataset|教育对话数据集|对话生成数据集[DB/OL](2024-10-29)[2025-08-23].https://www.selectdataset.com/dataset/f436a1b97fdc3c9cd38ed8294694b42d. |
| [1] | LI Fang, YUAN Baochun, SHEN Hang, WANG Tianjing, BAI Guangwei. Deep Reinforcement Learning-based Aircraft Task Offloading in Low Earth Orbit Satellite Networks [J]. Computer Science, 2026, 53(2): 406-415. |
| [2] | WAN Shenghua, XU Xingye, GAN Le, ZHAN Dechuan. Pre-training World Models from Videos with Generated Actions by Multi-modal Large Models [J]. Computer Science, 2026, 53(1): 51-57. |
| [3] | WANG Haoyan, LI Chongshou, LI Tianrui. Reinforcement Learning Method for Solving Flexible Job Shop Scheduling Problem Based onDouble Layer Attention Network [J]. Computer Science, 2026, 53(1): 231-240. |
| [4] | DUAN Pengting, WEN Chao, WANG Baoping, WANG Zhenni. Collaborative Semantics Fusion for Multi-agent Behavior Decision-making [J]. Computer Science, 2026, 53(1): 252-261. |
| [5] | ZHU Shihao, PENG Kexing, MA Tinghuai. Graph Attention-based Grouped Multi-agent Reinforcement Learning Method [J]. Computer Science, 2025, 52(9): 330-336. |
| [6] | CHEN Jintao, LIN Bing, LIN Song, CHEN Jing, CHEN Xing. Dynamic Pricing and Energy Scheduling Strategy for Photovoltaic Storage Charging Stations Based on Multi-agent Deep Reinforcement Learning [J]. Computer Science, 2025, 52(9): 337-345. |
| [7] | ZHANG Yongliang, LI Ziwen, XU Jiahao, JIANG Yuchen, CUI Ying. Congestion-aware and Cached Communication for Multi-agent Pathfinding [J]. Computer Science, 2025, 52(8): 317-325. |
| [8] | HUO Dan, YU Fuping, SHEN Di, HAN Xueyan. Research on Multi-machine Conflict Resolution Based on Deep Reinforcement Learning [J]. Computer Science, 2025, 52(7): 271-278. |
| [9] | PIAO Mingjie, ZHANG Dongdong, LU Hu, LI Rupeng, GE Xiaoli. Study on Multi-agent Supply Chain Inventory Management Method Based on Improved Transformer [J]. Computer Science, 2025, 52(6A): 240500054-10. |
| [10] | XU Dan, WANG Jiangtao. Design of Autonomous Decision for Trajectory Optimization of Intelligent Morphing Aircraft [J]. Computer Science, 2025, 52(6A): 240600068-7. |
| [11] | WU Zongming, CAO Jijun, TANG Qiang. Online Parallel SDN Routing Optimization Algorithm Based on Deep Reinforcement Learning [J]. Computer Science, 2025, 52(6A): 240900018-9. |
| [12] | ZHAO Chanchan, YANG Xingchen, SHI Bao, LYU Fei, LIU Libin. Optimization Strategy of Task Offloading Based on Meta Reinforcement Learning [J]. Computer Science, 2025, 52(6A): 240800050-8. |
| [13] | ZHAO Xuejian, YE Hao, LI Hao, SUN Zhixin. Multi-AGV Path Planning Algorithm Based on Improved DDPG [J]. Computer Science, 2025, 52(6): 306-315. |
| [14] | WANG Chenyuan, ZHANG Yanmei, YUAN Guan. Class Integration Test Order Generation Approach Fused with Deep Reinforcement Learning andGraph Convolutional Neural Network [J]. Computer Science, 2025, 52(6): 58-65. |
| [15] | LI Yuanbo, HU Hongchao, YANG Xiaohan, GUO Wei, LIU Wenyan. Intrusion Tolerance Scheduling Algorithm for Microservice Workflow Based on Deep Reinforcement Learning [J]. Computer Science, 2025, 52(5): 375-383. |
|
||