About Me
I am a Ph.D. candidate in the Department of Computer Science at George Mason University. My advisor is Prof. Jessica Lin. I received my B.Sc. degree in mathematics and statistics from York University and M.Sc. degree in Computational Science from George Mason University. I also did research on farm structure and financial analysis at U.S. Department of Agriculture and machine prognostic at Intel Cooperation before.
My research interest lies in the broad area of data mining, machine learning, and deep learning, with a special focus on high-resolution time series data. I am currently interested developping robust, interpretable, and reliable data mining and machine learning tools for anomaly detection, time series chain discovery, long sequence forecasting, and classification, as well as privacy-aware data sharing.
News
- [12/2023]: Our paper was accepted by SDM'23.
- [12/2023]: Our paper was accepted by DLG-AAAI'23.
- [12/2022]: Served as Session Chairs for two research track sessions for ICDM 2022.
- [10/2022]: Served on Program Committee for ICLR-23 and DLG-AAAI'23.
- [09/2022]: Our paper was accepted by ICDM 2022.
- [08/2022]: Served on Program Commitee for Open Source Forum at ICDM Workshop 2022 (OPF-ICDMW'22).
- [07/2022]: Served on Program Committee for AAAI-23.
- [07/2022]: Completed my Ph.D. proposal defense and advanced to a Ph.D. canddidate.
- [07/2022]: Served on Program Commitee for Undergraduate Consortium at KDD 2022 (KDD-UC'22).
- [05/2022]: Served on Program Committee for the Workshop on Deep Learning on Graphs: Methods and Applications@KDD 2022 (DLG-KDD'22)
- [05/2022]: Served as Session Chair (Time Series I) for SDM 2022.
- [11/2022]: served on the Program Committee for the International workshop on Deep Learning on Graphs: Methods and Applications@AAAI 2022 (DLG-AAAI'22)
- [12/2021]: Our paper was accepted by SDM 2022.
- [09/2021]: Received IMC Suneeth Nayak Scholarship from College of Engineering and Computing, GMU.
- [12/2019]: Our paper was accepted by SDM 2020.
- [03/2018]: Our paper was accepted by AIED 2018 and nominated as a Best Student Full Research Paper Nominee.
Publications
Li Zhang, Jiahao Ding, Yifeng Gao, Jessica Lin, "PMP: Privacy-Aware Matrix Profile against Sensitive Pattern Inference for Time Series", In Proceedings of the 2023 SIAM International Conference on Data Mining(SDM'23). Society for Industrial and Applied Mathematics, Minneapolis, USA, May 2023. [acceptance rate: 27.4%] (To Appear) [pdf]
Wenjie Xi*, Arnav Jain*, Li Zhang, Jessica Lin, "LB-SimTSC: An Efficient Similarity-Aware Graph Neural Network for Semi-Supervised Time Series Classification." Deep Learning on Graphs: Method and Applications Workshop, AAAI 2023 (DLG-AAAI'23). [pdf] (Accepted) * equal contribution
Li Zhang*, Yan Zhu*, Yifeng Gao, Jessica Lin, "Robust Time Series Chain Discovery with Incremental Nearest Neighbors." In 2022 IEEE International Conference on Data Mining (ICDM'22). (Accepted) [acceptance rate: 20%] [extended version] [ support website] * equal contribution
Li Zhang, Nital Patal, Xiuqi Li, Jessica Lin, "Joint Time Series Chain: Detecting Unusual Evolving Trend across Time Series", In Proceedings of the 2022 SIAM International Conference on Data Mining(SDM'22). Society for Industrial and Applied Mathematics. [acceptance rate: 27.8%] [pdf] [code]
Li Zhang, Yifeng Gao, Jessica Lin, "Semantic Discord: Finding Unusual Local Patterns for Time Series", In Proceedings of the 2020 SIAM International Conference on Data Mining(SDM'20). Society for Industrial and Applied Mathematics, Cincinnati, USA, May 2020. [acceptance rate: 24%] [pdf] [code]
Li Zhang and Huzefa Rangwala, "Early Identification of At-Risk Students Using Iterative Logistic Regression." In Proceedings of the 19th International Conference on Artificial Intelligence in Education (AIED'2018). Springer, London, UK, June 2018. [acceptance rate: 23.5%] [pdf] (Best Student Full Research Paper Nominee 6/192=3.125%)
Sujit K Ghosh, Christopher B Burns, Daniel L Prager, Li Zhang, and Glenn Hui. "On nonparametric estimation of thelatent distribution for ordinal data." Computational Statistics and Data Analysis(CSDA), 2018. [impact factor: 1.323][pdf]
Samiul Haque, Laszio P. Kindrat, Li Zhang, Vikenty Mikheev, Daewa Kim, Sijing Lui, Jooyeon Chung, Mykhailo Kuian, Jordan E. Massad, and Ralph C. Smith. Uncertainty-enabled design of electromagnetic reflectors with integrated shape control. In Proceding of SPIE, 2018.
Christopher Burns, Sujit Ghosh, Daniel Prager, and Li Zhang. Imputation of ordinal data in the agricultural resource management survey using bayesian methods. In Joint Statistical Meetings (JSM). American Statistical Association (JSM), 2017.
Professional Services
- Session Chair: SDM'22-Time Series I, ICDM'22-Time Series, Trajectory, and Data Flow, ICDM'22-Anomaly, Fraud, and Malware Detection
- Journal Reviewer: Pattern Reconition, ACM Transactions on Intelligent Systems and Technology, Big Data Research, IEEE Transactions on Semiconductor Manufacturing, Knowledge and Information Systems
- Conference Program Commitee/Reviewer: AAAI'20 &23, DLG-KDD'22, KDD-UC'22, DLG-AAAI'22&23, ICDMW-OPF'23, SDM'23, ICLR'23, KDD'23
- Conference External Reviewer: WSDM'20, AAAI'20, NeurIPS'20, ACL'20, CIKM'17, ICDM'19-23, KDD’17-20, SIGIR'20, SDM'17