代表性论文或专著
代表性论文: [1] Mengyuan Lu, Li Xiong, Kun Wang. Real-time trajectory tracking with conditional random field and Markov chain[C]. In FLINS-ISKE 2026, Accepted. [2] Kun Wang, Jie Lu, Anjin Liu. Adaptive information fusion-based concept drift learning for evolving multiple data streams [J]. IEEE Transactions on Knowledge and Data Engineering, 2025, 37(12): 6863-6876. [3] Kun Wang, Hang Yu. Adaptive diffusion learning for non-stationary data streams with concept drift [C]. In ISKE 2025, China, Nov.21-23, 2025. [4] Rudan Xue, Li Xiong, Kun Wang. An evolutionary game approach for information sharing within medical consortium based on complex network [J]. Computers & Industrial Engineering, 2025, 203, 110963. [5] Kun Wang, Jie Lu, Anjin Liu, Guangquan Zhang. TS-DM: A time segmentation-based data stream learning method for concept drift adaptation[J]. IEEE Transactions on Cybernetics, 2024, 54(10): 6000-6011. [6] Kun Wang, Li Xiong, Anjin Liu, Guangquan Zhang, Jie Lu. A self-adaptive ensemble for user interest drift learning[J]. Neurocomputing, 2024, 577, 127308. [7] Kun Wang, Li Xiong, Rudan Xue. Real-time data stream learning for emergency decision-making under uncertainty[J]. Physica A: Statistical Mechanics and its Applications, 2024, 633, 129429. [8] Kun Wang, Jie Lu, Anjin Liu, Guangquan Zhang. An adaptive stacking method for multiple data streams learning under concept drift[C]. In FLINS-ISKE 2024, Spain, Jul.16-21, 2024. [9] Bin Zhang, Jie Lu, Kun Wang, Guangquan Zhang, ML4MDS: A machine learning platform for multiple data stream[C]. In FLINS-ISKE 2024, Spain, Jul.16-21, 2024. [10] Kun Wang, Jie Lu, Anjin Liu, Guangquan Zhang, Li Xiong. Evolving gradient boost: A pruning scheme based on loss improvement ratio for learning under concept drift[J]. IEEE Transactions on Cybernetics, 2023, 53(4): 2110-2123. [11] Kun Wang, Jie Lu, Anjin Liu, Guangquan Zhang. TCR-M: A topic change recognition-based method for data stream learning[C]. In KES 2023, Greece, Sep.6-8, 2023. [12] Kun Wang, Jie Lu, Anjin Liu, Guangquan Zhang. An augmented learning approach for multiple data streams under concept drift[C]. In AJCAI 2023, Brisbane, Australia, Nov.28-Dec.1, 2023. [13] Kun Wang, Jie Lu, Anjin Liu, Yiliao Song, Guangquan Zhang, Li Xiong. Elastic gradient boosting decision tree with adaptive iterations for concept drift adaptation[J]. Neurocomputing, 2022, 491, 288-304. [14] Kun Wang, Anjin Liu, Jie Lu, Guangquan Zhang, Li Xiong. An elastic gradient boosting decision tree for concept drift learning[C]. In AJCAI 2020, Canberra, Australia, Nov.29-30, 2020. [15] Anjin Liu, Guangquan Zhang, Kun Wang, Jie Lu. Fast switch naive Bayes to avoid redundant update for concept drift learning[C]. In IJCNN 2020, Glasgow, United Kingdom, Jul.19-24, 2020. [16] 熊励, 陆梦园, 王锟. 基于LDA-DLNB 模型的突发事件网络舆情识别与智库治理研究 [J]. 智库理论与实践, 2024, 9 (02): 1-12. [17] 熊励, 王锟, 陈楠, 薛茹丹. 数据流学习驱动的突发事件风险信息预警体系研究 [J]. 情报理论与实践, 2023, 46(07): 140-149. [18] 熊励, 王成文, 王锟. 基于事件本体的疫情知识库构建策略[J]. 图书情报工作, 2021, 65(14): 138-148. [19] 熊励, 王锟, 许肇然. 互联网支撑上海全球城市竞争生态优势提升研究——基于世界城市网络模型[J]. 中国软科学, 2018, (09), 76-90. [20] 熊励, 王锟, 钟美芝. 大数据可视化分析在支撑智库研究中的应用与创新 [J]. 智库理论与实践, 2018, 3 (04): 15-24.
专著: 熊励,王成文,王锟,颜卉. 互联网赋能全球城市[M]. 北京:清华大学出版社, 2019.
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