List of state of the art papers focus on deep learning and resources, code and experiments using deep learning for time series forecasting. Classic methods vs Deep Learning methods, Competitions...
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Zero-shot and few-shot time series forecasting with ordinal regression recurrent neural networks
- Bernardo Perez Orozco and Stephen J. Roberts.
- [Code]
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Financial Time Series Representation Learning
- Philippe Chatigny, et al.
- Code not yet.
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- Rui Li, et al.
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IBM research and MIT
- Code not yet.
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Deep Markov Spatio-Temporal Factorization
- Amirreza Farnoosh, 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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Elastic Machine Learning Algorithms in Amazon SageMaker
- Edo Liberty, et al.
- Code not yet.
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Time Series Data Augmentation for Deep Learning: A Survey
- Qingsong Wen, et al.
- Code not yet.
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Block Hankel Tensor ARIMA for Multiple Short Time Series Forecasting
AAAI 2020
- QIQUAN SHI, et al.
- [Code]
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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].
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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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- Xianfeng Tang, et al.
IBM Research, NY
- Code not yet.
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Topology-Based Clusterwise Regression for User Segmentation and Demand Forecasting
- Rodrigo Rivera-Castro, et al.
- Code not yet.
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Evolutionary LSTM-FCN networks for pattern classification in industrial processes
- Patxi Ortego, et al.
- Code not yet.
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Forecasting Multivariate Time-Series Data Using LSTM and Mini-Batches
- Athar Khodabakhsh, et al.
- Code not yet.
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Tensorized LSTM with Adaptive Shared Memory for Learning Trends in Multivariate Time Series
AAAI 2020
- Dongkuan Xu, et al.
- [Code]
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RELATIONAL STATE-SPACE MODEL FOR STOCHASTIC MULTI-OBJECT SYSTEMS
ICLR 2020
- Fan Yang, et al.
- Code not yet.
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For2For: Learning to forecast from forecasts
- Zhao, Shi, et al.
- Code not yet.
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Similarity Preserving Representation Learning for Time Series Clustering
- Qi Lei, et al.
IBM research
- [Code]
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DSANet: Dual Self-Attention Network for Multivariate Time Series Forecasting
- Siteng Huang, et al.
- Code not yet.
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Enhancing Time Series Momentum Strategies Using Deep Neural Networks
- Bryan Lim, et al.
- Code not yet.
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DYNAMIC TIME LAG REGRESSION: PREDICTING WHAT & WHEN
- Mandar Chandorkar, et al.
- Code not yet.
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Time-series Generative Adversarial Networks
NeurIPS 2019
- Jinsung Yoon. et al.
- Code not yet.
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Temporal Fusion Transformers for Interpretable Multi-horizon Time Series Forecasting
- Bryan Lim, et al.
Google Research
- [Code]
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- Vincent Fortuin, et al.
- Code not yet.
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Deep Physiological State Space Model for Clinical Forecasting
- Yuan Xue, et al.
- not yet
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AR-Net: A simple Auto-Regressive Neural Network for time-series
- Oskar Triebe, et al.
Facebook Research
- Code not yet.
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Learning Time-series Data of Industrial Design Optimization using Recurrent Neural Networks
- Sneha Saha, et al.
Honda Research Institute Europe GmbH
- Code not yet.
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RobustSTL: A Robust Seasonal-Trend Decomposition Algorithm for Long Time Series
- Qingsong Wen, et al.
- [Code]
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Constructing Gradient Controllable Recurrent Neural Networks Using Hamiltonian Dynamics
- Konstantin Rusch, et al.
- Code not yet.
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SOM-VAE: Interpretable Discrete Representation Learning on Time Series
ICLR 2019
- Vincent Fortuin, et al.
- [Code]
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Unsupervised Scalable Representation Learning for Multivariate Time Series
NeurIPS 2019
In Applications -- Time Series Analysis- Jean-Yves Franceschi, et al.
- [Code]
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Factorized Inference in Deep Markov Models for Incomplete Multimodal Time Series
- Zhi-Xuan Tan, et al.
- Code not yet.
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You May Not Need Order in Time Series Forecasting
- Yunkai Zhang, et al.
- Code not yet
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Self-boosted Time-series Forecasting with Multi-task and Multi-view Learning
AAAI 2020
- Long H. Nguyen, et al.
- Code not yet
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Shape and Time Distortion Loss for Training Deep Time Series Forecasting Models
NeurIPS2019
- Vincent Le Guen and Nicolas Thome.
- [Code]
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Dynamic Local Regret for Non-convex Online Forecasting
NeurIPS 2019
- Sergul Aydore, et al.
- [Code]
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Bayesian Temporal Factorization for Multidimensional Time Series Prediction
- Xinyu Chen, and Lijun Sun
- [Code and data]
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Probabilistic sequential matrix factorization
- Ömer Deniz Akyildiz, et al.
- Code not yet
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Sequential VAE-LSTM for Anomaly Detection on Time Series
- Run-Qing Chen, et al.
- Code not yet
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High-Dimensional Multivariate Forecasting with Low-Rank Gaussian Copula Processes
NeurIPS 2019
- David Salinas, et al.
- Code not yet
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Recurrent Neural Filters: Learning Independent Bayesian Filtering Steps for Time Series Prediction
- Bryan Lim, et al.
- Code not yet
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- Chengxi Liu, et al.
- Code not yet
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SKTIME: A UNIFIED INTERFACE FOR MACHINE LEARNING WITH TIME SERIE
- [Code]
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Recurrent Neural Networks for Time Series Forecasting: Current Status and Future Directions
- [Code]
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- Antonio Rafael Sabino Parmezan, Vinicius M. A. Souza and Gustavo E. A. P. A. Batista. USP
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Explainable Deep Neural Networks for Multivariate Time Series Predictions
IJCAI 2019
- Roy Assaf and Anika Schumann.
IBM Research, Zurich
- Code not yet
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Outlier Detection for Time Series with Recurrent Autoencoder Ensembles
IJCAI 2019
- [Code]
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Learning Interpretable Deep State Space Model for Probabilistic Time Series Forecasting
IJCAI 2019
- Code not yet
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Deep Factors for Forecasting
ICML 2019
- Code not yet
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Probabilistic Forecasting with Spline Quantile Function RNNs
- Code not yet
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Deep learning for time series classification: a review
- Code not yet
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Multivariate LSTM-FCNs for Time Series Classification
- Code not yet
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Criteria for classifying forecasting methods
- Code not yet
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GluonTS: Probabilistic Time Series Models in Python
- [Code]
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DeepAR: Probabilistic Forecasting with Autoregressive Recurrent Networks
- David Salinas, et al.
- Code not yet
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Attend and Diagnose: Clinical Time Series Analysis Using Attention Models
AAAI 2018
- Huan Song, Deepta Rajan, et al.
- not yet.
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Precision and Recall for Time Series
NeurIPS2018
- Nesime Tatbul, et al.
- Code not yet.
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Deep State Space Models for Time Series Forecasting
NeurIPS2018
- Code not yet
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Deep Factors with Gaussian Processes for Forecasting
Third workshop on Bayesian Deep Learning (NeurIPS 2018)
- [Code]
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DIFFUSION CONVOLUTIONAL RECURRENT NEURAL NETWORK: DATA-DRIVEN TRAFFIC FORECASTING
ICLR 2018
- Yaguang Li, et al.
- [Code]
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DEEP TEMPORAL CLUSTERING: FULLY UNSUPERVISED LEARNING OF TIME-DOMAIN FEATURES
- Naveen Sai Madiraju, et al.
- [Code-unofficial implementation ]
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Modeling Long- and Short-Term Temporal Patterns with Deep Neural Networks
- Guokun Lai, Wei-Cheng Chang, Yiming Yang, Hanxiao Liu
- [Code]
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Discriminative State-Space Models
NIPS 2017
- Vitaly Kuznetsov and Mehryar Mohri.
- Code not yet.
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Temporal Regularized Matrix Factorization for High-dimensional Time Series Prediction
NIPS 2016
- [Code]
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Time Series Prediction and Online Learning
JMLR 2016
- Vitaly Kuznetsov and Mehryar Mohri.
- Code not yet.
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Forecasting economic and financial time series: ARIMA VS. LSTM
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A comparative study between LSTM and ARIMA for sales forecasting in retail
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ARIMA/SARIMA vs LSTM with Ensemble learning Insights for Time Series Data
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Stock Market Prediction by Recurrent Neural Network on LSTM Model
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Decoupling Hierarchical Recurrent Neural Networks With Locally Computable Losses
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Electric Load Forecasting: Load forecasting on Delhi area electric power load using ARIMA, RNN, LSTM and GRU models.
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TimeseriesAI: Practical Deep Learning for Time Series / Sequential Data using fastai/ Pytorch.
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TimescaleDB: An open-source time-series SQL database optimized for fast ingest and complex queries. Packaged as a PostgreSQL extension.
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Using attentive neural processes for forecasting power usage
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https://www.kaggle.com/c/recruit-restaurant-visitor-forecasting