List of state of the art papers, code, and other resources focus on time series forecasting.
- M4 competition
- Kaggle time series competition
- Papers
- Conferences
- Theory-Resource
- Code Resource
- Datasets
- The M4 Competition: 100,000 time series and 61 forecasting methods
- A hybrid method of exponential smoothing and recurrent neural networks for time series forecasting
- Weighted ensemble of statistical models
- FFORMA: Feature-based forecast model averaging
- Walmart Store Sales Forecasting (2014)
- Walmart Sales in Stormy Weather (2015)
- Rossmann Store Sales (2015)
- Wikipedia Web Traffic Forecasting (2017)
- Corporación Favorita Grocery Sales Forecasting (2018)
- Recruit Restaurant Visitor Forecasting (2018)
- COVID19 Global Forecasting (2020)
- Jane Street Future Market Prediction(2021)
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MICN: Multi-scale Local and Global Context Modeling for Long-term Series Forecasting
ICLR 2023 Oral
- [code]
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- [code]
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Scaleformer: Iterative Multi-scale Refining Transformers for Time Series Forecasting
ICLR 2023
- [code]
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SAITS: Self-Attention-based Imputation for Time Series
Expert Systems with Applications
- [code]
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A Time Series is Worth 64 Words: Long-term Forecasting with Transformers
ICLR 2023
- [code]
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Deep Learning for Time Series Anomaly Detection: A Survey
survey
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A Comprehensive Survey of Regression Based Loss Functions for Time Series Forecasting
survey
- [code]
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Non-stationary Transformers: Rethinking the Stationarity in Time Series Forecasting
NeurIPS 2022
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Generative Time Series Forecasting with Diffusion, Denoise and Disentanglement
NeurIPS 2022
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SCINet: Time Series Modeling and Forecasting with Sample Convolution and Interaction
NeurIPS 2022
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Learning Latent Seasonal-Trend Representations for Time Series Forecasting
NeurIPS 2022
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GT-GAN: General Purpose Time Series Synthesis with Generative Adversarial Networks
NeurIPS 2022
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Causal Disentanglement for Time Series
NeurIPS 2022
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Self-Supervised Contrastive Pre-Training For Time Series via Time-Frequency Consistency
NeurIPS 2022
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FiLM: Frequency improved Legendre Memory Model for Long-term Time Series Forecasting
NeurIPS 2022
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BILCO: An Efficient Algorithm for Joint Alignment of Time Series
NeurIPS 2022
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LSAR: Efficient Leverage Score Sampling Algorithm for the Analysis of Big Time Series Data
NeurIPS 2022
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Unsupervised Learning of Algebraic Structure from Stationary Time Sequences
NeurIPS 2022
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Dynamic Sparse Network for Time Series Classification: Learning What to “See”
NeurIPS 2022
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WaveBound: Dynamically Bounding Error for Stable Time Series Forecasting
NeurIPS 2022
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Conditional Loss and Deep Euler Scheme for Time Series Generation
AAAI 2022
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TS2Vec: Towards Universal Representation of Time Series
AAAI 2022
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Reinforcement Learning based Dynamic Model Combination for Time Series Forecasting
AAAI 2022
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CATN: Cross Attentive Tree-Aware Network for Multivariate Time Series Forecasting
AAAI 2022
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Transformers in Time Series: A Survey
review
- Wen, et al.
- Code
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Pyraformer: Low-Complexity Pyramidal Attention for Long-Range Time Series Modeling and Forecasting
ICLR 2022 oral
- Liu, et al.
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A machine learning approach for forecasting hierarchical time series
- Mancuso, et al.
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Probabilistic Transformer For Time Series Analysis
NeuIPS 2021
- Tang, et al.
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Autoformer: Decomposition transformers with auto-correlation for long-term series forecasting
NeuIPS 2021
- Wu, et al.
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CSDI: Conditional Score-based Diffusion Models for Probabilistic Time Series Imputation
NeuIPS 2021
- Yusuke, et al.
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Variational Inference for Continuous-Time Switching Dynamical Systems
NeuIPS 2021
- Lukas, et al.
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MixSeq: Connecting Macroscopic Time Series Forecasting with Microscopic Time Series Data
NeuIPS 2021
- Zhu, et al.
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Coresets for Time Series Clustering
NeuIPS 2021
- Zhou, et al.
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Online false discovery rate control for anomaly detection in time series
NeuIPS 2021
- Quentin, et al.
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Adjusting for Autocorrelated Errors in Neural Networks for Time Series
NeuIPS 2021
- Sun, et al.
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Deep Explicit Duration Switching Models for Time Series
NeuIPS 2021
- Zhou, et al.
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Deep Learning for Time Series Forecasting: A Survey
survey
- Torres, et al.
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Whittle Networks: A Deep Likelihood Model for Time Series
ICML 2021
- Yu, et al.
- Code
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Z-GCNETs: Time Zigzags at Graph Convolutional Networks for Time Series Forecasting
ICML 2021
- Chen, et al.
- Code
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Long Horizon Forecasting With Temporal Point Processes
WSDM 2021
- Deshpande, et al.
- Code
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Informer: Beyond Efficient Transformer for Long Sequence Time-Series Forecasting
AAAI 2021 best paper
- Zhou, et al.
- Code
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Coupled Layer-wise Graph Convolution for Transportation Demand Prediction
AAAI 2021
- Ye, et al.
- Code
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Block Hankel Tensor ARIMA for Multiple Short Time Series Forecasting
AAAI 2020
- Shi, et al.
- Code
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Adversarial Sparse Transformer for Time Series Forecasting
NeurIPS 2020
- Wu, et al.
- Code not yet
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Benchmarking Deep Learning Interpretability in Time Series Predictions
NeurIPS 2020
- Ismail, et al.
- [Code]
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Deep reconstruction of strange attractors from time series
NeurIPS 2020
- Gilpin, et al.
- [Code]
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Rethinking 1D-CNN for Time Series Classification: A Stronger Baseline
classification
- Tang, et al.
- [Code]
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Active Model Selection for Positive Unlabeled Time Series Classification
- Liang, et al.
- [Code]
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Unsupervised Phase Learning and Extraction from Quasiperiodic Multidimensional Time-series Data
- Prayook, et al.
- [Code]
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Connecting the Dots: Multivariate Time Series Forecasting withGraph Neural Networks
- Wu, et al.
- [Code]
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- Löning, et al.
- Code not yet
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RobustTAD: Robust Time Series Anomaly Detection viaDecomposition and Convolutional Neural Networks
- Gao, et al.
- Code not yet
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Neural Controlled Differential Equations forIrregular Time Series
- Patrick Kidger, et al.
University of Oxford
- [Code]
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Time Series Forecasting With Deep Learning: A Survey
- Lim, et al.
- Code not yet
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Neural forecasting: Introduction and literature overview
- Benidis, et al.
Amazon Research
- Code not yet.
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Time Series Data Augmentation for Deep Learning: A Survey
- Wen, et al.
- Code not yet
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Modeling time series when some observations are zero
Journal of Econometrics 2020
- Andrew Harveyand Ryoko Ito.
- Code not yet
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Meta-learning framework with applications to zero-shot time-series forecasting
- Oreshkin, et al.
- Code not yet.
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Harmonic Recurrent Process for Time Series Forecasting
- Shao-Qun Zhang and Zhi-Hua Zhou.
- Code not yet.
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Block Hankel Tensor ARIMA for Multiple Short Time Series Forecasting
AAAI 2020
- QIQUAN SHI, et al.
- Code not yet
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Learnings from Kaggle's Forecasting Competitions
- Casper Solheim Bojer, et al.
- Code not yet.
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An Industry Case of Large-Scale Demand Forecasting of Hierarchical Components
- Rodrigo Rivera-Castro, et al.
- Code not yet.
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Multi-variate Probabilistic Time Series Forecasting via Conditioned Normalizing Flows
- Kashif Rasul, et al.
- Code not yet.
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- Joel Janek Dabrowski, et al.
- Code not yet.
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Anomaly detection for Cybersecurity: time series forecasting and deep learning
Good review about forecasting
- Giordano Colò.
- Code not yet.
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Event-Driven Continuous Time Bayesian Networks
- Debarun Bhattacharjya, et al.
Research AI, IBM
- Code not yet.
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PyPOTS: A Python Toolbox for Data Mining on Partially-Observed Time Series
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Seglearn: A Python Package for Learning Sequences and Time Series
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tsflex: Flexible Time Series Processing & Feature Extraction
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PyTorch Forecasting: A Python Package for time series forecasting with PyTorch
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HyperTS: A Full-Pipeline Automated Time Series Analysis Toolkit
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List of tools & datasets for anomaly detection on time-series data
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A scikit-learn compatible Python toolbox for machine learning with time series
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plotly-resampler: Visualize large time series data with plotly.py
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A statistical library designed to fill the void in Python's time series analysis capabilities
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RNN based Time-series Anomaly detector model implemented in Pytorch
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A Python toolkit for rule-based/unsupervised anomaly detection in time series
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A curated list of awesome time series databases, benchmarks and papers
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Matrix Profile analysis methods in Python for clustering, pattern mining, and anomaly detection