This repository is a comprehensive collection of recent research papers and resources in the field of time series analysis, spanning a wide range of topics including time series forecasting, time series anomaly detection, time series early classification, irregular time series learning, time series representation learning, and more. Feel free to suggest notable works in the issues or submit a pull request!
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đŠ 2025/12/17: Add AAAI 2026 Papers
đŠ 2025/11/17: Add MM 2025 Papers
đŠ 2025/11/12: Add ACL 2025 Papers
đŠ 2025/11/2: Add Some Recommended Papersâ
đŠ 2025/10/27: Add Some Recommended Papersâ
đŠ 2025/10/23: Add ICML 2025 Papers
đŠ 2025/10/14: Add Time Series Foundation Model Part
đŠ 2025/10/2: Add NeurIPS 2025 Papers
đŠ 2025/8/4: Add IJCAI 2025 Papers
đŠ 2025/7/12: Add SIGMOD 2025 Papers
đŠ 2025/7/11: Add Data Processing Part
đŠ 2025/6/25: Add KDD 2025 Papers (February 2025)
đŠ 2025/5/12: Add KDD 2025 Papers (August 2024)
đŠ 2025/4/6: Add Some Significant Papers are marked with a đ(indicating high citations)
đŠ 2025/4/3: Add Some of the recommended papers are marked with a â(just my personal reference)
đŠ 2025/2/28: Add WWW 2025 Papers
đŠ 2025/2/19: Add Causal Discovery Part
đŠ 2025/2/12: Add ICLR 2025 Papers
đŠ 2025/1/23: Add AAAI 2025 Papers
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đŠ 2024/12/23: Add ICDM 2025 Papers
đŠ 2024/12/8: Add VLDB 2024 Papers
đŠ 2024/10/30: Add NeurIPS 2024 Papers
đŠ 2024/10/11: Add ICML 2024 Papers
đŠ 2024/9/4: Add KDD 2024 Papers
Time Series Forecasting (Some Significant Papers)
Time Series Anomaly Detection(Some Significant Papers)
Time Series Early Classification (Some Significant Papers)
Irregular Time Series Learning
| Method Name | Code | Source |
|---|---|---|
| EarlyMix: Hierarchical Mixing for Early Time Series Classificationđ | Code | ICME 2025 |
| Second-order Confidence Network for Early Classification of Time Seriesđ | None | TIST 2023 |
| CALIMERA: : A new early time series classification method | Code | IPM 2023 |
| TEASER: Early and Accurate Time Series Classificationđ | Code | DMKD 2020 |
| An Effective Confidence-Based Early Classification of Time Series | Code | Access 2019 |
| Method Name | Code | Source |
|---|---|---|
| CoFinDiff: Controllable Financial Diffusion Model for Time Series Generation | None | IJCAI 2025 |
| The Best of Both Worlds: On Repairing Timestamps and Attribute Values for Multivariate Time Series | Code | SIGMOD 2025 |
| Largest Triangle Sampling for Visualizing Time Series in Database | Code | SIGMOD 2025 |
| In-Database Time Series Clustering | Code | SIGMOD 2025 |
| Camel: Efficient Compression of Floating-Point Time Series | Code | SIGMOD 2025 |
| Multivariate Time Series Cleaning under Speed Constraints | Code | SIGMOD 2025 |
| Method Name | Code | Source |
|---|---|---|
| Causal View of Time Series Imputation: Some Identification Results on Missing Mechanism | None | IJCAI 2025 |
| DyCAST: Learning Dynamic Causal Structure from Time Series | None | ICLR 2025 |
| CausalRivers - Scaling up benchmarking of causal discovery for real-world time-series | Code | ICLR 2025 |
| Course Name | Link | Source |
|---|---|---|
| Time Series Analysis, MIT | MIT OCW | MIT |
| Time Series Forecasting, Udacity | Udacity | Udacity |
| Practical Time Series Analysis, Coursera | Coursera | Coursera |
| Time Series Forecasting using Python | Analytics Vidhya | Analytics Vidhya |
| Policy Analysis Using Interrupted Time Series, edX | edX | edX |
| Repository Name | Link | Description |
|---|---|---|
| PyPOTS: A Python Toolbox for Data Mining on Partially-Observed Time Series | GitHub | Python toolbox for time series |
| FOST from Microsoft | GitHub | Forecasting toolbox |
| PyTorch Forecasting | GitHub | Time series forecasting with PyTorch |
| A collection of time series prediction methods | GitHub | Collection of methods |
| Flow Forecast: A deep learning framework for time series forecasting | GitHub | Deep learning framework |