朱映秋 副教授

基本信息:

副教授、硕士生导师

电子邮件:inqzhu@uibe.edu.cn

办公地点:诚信楼110

教育背景:

20189月至20226 中国人民大学雷火竞技官网,博士学位

20159月至20186 中国科学院大学计算机科学与技术学院,硕士学位

20119月至20156 中国人民大学信息学院,学士学位

工作经历:

20261月至今 雷火竞技官网,副教授

20228月至202512 雷火竞技官网,讲师

研究兴趣:

复杂数据聚类分析、电子商务数据挖掘、高频金融数据分析、深度学习、复杂网络分析

欢迎对相关研究感兴趣的同学与我联系!

科研项目:

主持国家自然科学基金青年项目:基于支付数据的中小微企业行为模式聚类分析

参与国家自然科学基金面上项目:基于智能合约的央行数字货币自动做市商机制研究

参与国家自然科学基金面上项目:人工智能背景下复杂网络数据建模与应用研究

参与国家自然科学基金面上项目:稀疏网络数据的建模,计算及应用

主要研究成果:

* Zhu, Y., & Huang, D. (2026). A Communication Efficient Boosting Method for Distributed Spectral Clustering. Pattern Recognition, 176, 113168.

* Zhu, Y., Li, J., Qin, L., Yang, J., & Chen, M. (2026). SGCN: A Robust Subsampling-Based GCN for Large-Scale Network with Out-of-Distribution Nodes. Annals of Operations Research. (Online)

* Qin, L., Zhang, X., Zhu, Y.*, Chen, Y., Shia, B. (2026). Bilateral Matrix Spatiotemporal Autoregressive Model. Computational Statistics & Data Analysis, 215, 108291.

* Qin, L., Wang, Y., Zhu, Y., Shia, B. (2026). A Universal Kriging Predictor for Probability Density Function based on Gaussian Mixture Model. Journal of Forecasting, 45(3), 1188-1202.

* Wang, Y., Zhu, Y., Shia, B., Chen, M., Qin, L. (2026). Density Prediction of Income Distribution based on Mixed Frequency Data. Applied Economics. (Online)

* 秦磊, 陈阳, 朱映秋*, 谢邦昌 (2026). 矩阵值时间序列的时空自回归模型及其应用. 统计研究, 2026, 43(04): 146-160.

* Zhu, Y., Huang, D., Zhang, B. (2025). A Wasserstein Distance-Based Spectral Clustering Method for Transaction Data Analysis. Expert Systems With Applications, 260, 125418.

* Qin, L., Wang, Y.*, Zhu, Y.*, Shia, B. (2025). Bayesian Dynamic Matrix Factor Models. Journal of Business & Economic Statistics, 43(4), 11701182.

* Zhu, Y., Wang, Y., Qin, L., Zhang, B., Shia, B., Chen, M. (2025). Naïve Bayes Classifier based on Reliability Measurement for Datasets with Noisy Labels. Annals of Operations Research, 349, 259-286.

* Qin, L., Zhu, Y.*, Liu, S., Zhang, X., Zhao, Y. (2025). The Shapley Value in Data Science: Advances in Computation, Extensions, and Applications. Mathematics, 13(10), 1581.

* Xu, K., Zhu, Y.*, Liu, Y., Wang, H. (2025). CluBear: A Subsampling Package for Interactive Statistical Analysis with Massive Data on a Single Machine. Communications in Statistics-Simulation and Computation. 54(6), 19661986.

* Xiao, Y., Zhu, Y.*, Huang, D. (2025). Adaptive Subsampling Spectral Clustering based on Second-Order Neighbour Relationships for Sparse Networks. Stat, 14(4), e70098.

* Zhu, Y., Bao, Y., Qin, L., Sun, Q., Shia, B., Chen, M. (2025). Resilience Analysis based on Multi-Layer Network Community Detection of Supply Chain Network. Annals of Operations Research. (Online)

* Yin, H., Wang, L., Zhu, Y., Zhu, L., & Huang, D. (2025). Vertical Federated Feature Screening. In The Thirty-ninth Annual Conference on Neural Information Processing Systems (NeurIPS).

* 朱映秋, 郑畅, 张波 (2025). 金融时间序列的自适应贝叶斯在线变点检测. 统计研究, 42(01), 145-160.

* 秦磊, 王寅智, 朱映秋, 谢邦昌 (2025). 已知组结构下混频时间序列的潜在因子分析. 系统工程理论与实践, 45(3): 1014-1028.

* Zhu, Y., Wang, R., Feng, M., Qin, L., Shia, B., Chen, M. (2024). Supply Chain Analysis based on Community Detection of Multi-Layer Weighted Networks. Mathematics, 12(22), 3606.

* Zeng, Q., Zhu, Y.*, Zhu, X., Wang, F., Zhao, W., Sun, S., Su, M., Wang, H. (2024). Improved Naive Bayes with Mislabeled Data. Statistics and Its Interface, 17(3), 323-336.

* Wang, Y., Zhu, Y., Sun, Q., Qin, L. (2024). Adaptively Robust High-Dimensional Matrix Factor Analysis under Huber Loss Function. Journal of Statistical Planning and Inference. 231, 106137.

* Deng, J., Huang, D., Ding, Y., Zhu, Y., Jing, B., Zhang, B. (2024). Subsampling Spectral Clustering for Stochastic Block Models in Large-Scale Networks. Computational Statistics & Data Analysis, 189, 107835.

* 朱映秋, 黄丹阳, 张波 (2024). 基于高斯混合模型的分布因子聚类方法. 统计研究, 41(06), 147-160.

* 陈阳, 张晓梅, 朱映秋, 秦磊 (2024). 矩阵值时间序列自回归模型的稳健估计. 应用数学学报, 47(6): 999-1026.

* Pan, R., Zhu, Y.*, Guo, B., Zhu, X., Wang, H. (2023). A Sequential Addressing Subsampling Method for Massive Data Analysis under Memory Constraint. IEEE Transactions on Knowledge and Data Engineering, 35(9), 9502-9513.

* 黄丹阳, 罗伊琳, 朱映秋* (2023). 面向第三方支付平台非结构化大数据分布特征的融合聚类算法. 经济管理学刊, 2(3), 179-208.

* 黄丹阳, 朱映秋, 南金伶, 王汉生 (2023).基于交易流水的信用卡套现交易及商户识别. 数理统计与管理, 42(01), 127-144.

* Zhu, Y., Deng, Q., Huang, D., Jing, B., Zhang, B. (2021). Clustering based on KolmogorovSmirnov Statistic with Application to Bank Card Transaction Data. Journal of the Royal Statistical Society: Series C (Applied Statistics), 70(3), 558-578.

* Zhu, Y., Huang, D., Gao, Y., Wu, R., Chen, Y., Zhang, B., Wang, H. (2021). Automatic, Dynamic, and Nearly Optimal Learning Rate Specification via Local Quadratic Approximation. Neural Networks, 141, 11-29.

* Wang, F., Zhu, Y., Huang, D., Qi, H., Wang, H. (2021). Distributed One-Step Upgraded Estimation for Non-Uniformly and Nonrandomly Distributed Data. Computational Statistics & Data Analysis, 162, 107265.

* 朱映秋, 张波 (2021). 基于已实现波动率的上证综指异常时序检测. 系统工程理论与实践, 41(3), 625-635.

* 黄丹阳, 毕博洋, 朱映秋 (2021). 基于高斯谱聚类的风险商户聚类分析. 统计研究, 38(6), 145-160.

* Zhu, Y., Huang, D., Xu, W., Zhang, B. (2020). Link Prediction Combining Network Structure and Topic Distribution in Large-Scale Directed Network. Journal of Organizational Computing and Electronic Commerce, 30(2), 169-185.

个人学术主页:https://inqzhu.github.io/academic/

开源项目:

部分研究成果已整合至开源项目中,并正式发布:

Ftsa - 基于已实现波动率的金融高频时间序列异常检测算法包(Python)

链接: https://pypi.org/project/Ftsa/

LQA - 基于局部二次逼近的深度学习优化算法包(Python-TensorFlow)

链接: https://pypi.org/project/lqa/

CluBear - 低内存要求的交互式大规模数据分析算法包(Python

链接:https://pypi.org/project/clubear/


专利软著:

发明专利:一种基于图神经网络和迁移学习的产品推荐方法,CN119919216A


软件著作权:基于图神经网络和迁移学习的跨平台大规模数据融合分析系统,2025SR1056148


荣誉奖项:

2026 亚洲电竞首页“人工智能+”教学先进称号

2026 亚洲电竞首页本科生优秀毕业论文指导教师(本科生:肖烨涵)