SupplyGraph: A Benchmark Dataset for Supply Chain Planning using Graph Neural Networks (2401.15299v2)
Abstract: Graph Neural Networks (GNNs) have gained traction across different domains such as transportation, bio-informatics, language processing, and computer vision. However, there is a noticeable absence of research on applying GNNs to supply chain networks. Supply chain networks are inherently graph-like in structure, making them prime candidates for applying GNN methodologies. This opens up a world of possibilities for optimizing, predicting, and solving even the most complex supply chain problems. A major setback in this approach lies in the absence of real-world benchmark datasets to facilitate the research and resolution of supply chain problems using GNNs. To address the issue, we present a real-world benchmark dataset for temporal tasks, obtained from one of the leading FMCG companies in Bangladesh, focusing on supply chain planning for production purposes. The dataset includes temporal data as node features to enable sales predictions, production planning, and the identification of factory issues. By utilizing this dataset, researchers can employ GNNs to address numerous supply chain problems, thereby advancing the field of supply chain analytics and planning. Source: https://github.com/CIOL-SUST/SupplyGraph
- Data analytics in the supply chain management: Review of machine learning applications in demand forecasting. Operations and Supply Chain Management: An International Journal, 14(1): 1–13.
- Firms, Failures, and Fluctuations: The Macroeconomics of Supply Chain Disruptions. Working Paper 27565, National Bureau of Economic Research.
- Aggarwal, C. C. 2015. Outlier Analysis. In Data Mining, 237–263. Springer International Publishing.
- Applying and comparing policy gradient methods to multi-echelon supply chains with uncertain demands and lead times. In International Conference on Artificial Intelligence and Soft Computing, 229–239. Springer.
- Data considerations in graph representation learning for supply chain networks. arXiv preprint arXiv:2107.10609.
- Comparative analysis of short-term demand predicting models using ARIMA and deep learning. International Journal of Electrical and Computer Engineering, 11(4): 3319.
- A Multi-Scale Approach for Graph Link Prediction. In AAAI Conference on Artificial Intelligence.
- Line Graph Neural Networks for Link Prediction. IEEE Transactions on Pattern Analysis and Machine Intelligence, 44: 5103–5113.
- Combinatorial optimization and reasoning with graph neural networks. arXiv:2102.09544.
- Computational optimization and logistics challenges in industrial applications. Annals of Operations Research, 203: 1–2.
- XGBoost: A Scalable Tree Boosting System. In Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD ’16, 785–794. New York, NY, USA: ACM. ISBN 978-1-4503-4232-2.
- Empirical Evaluation of Gated Recurrent Neural Networks on Sequence Modeling. arXiv:1412.3555.
- Graph-Augmented Normalizing Flows for Anomaly Detection of Multiple Time Series. In International Conference on Learning Representations.
- Graph neural network-based anomaly detection in multivariate time series. In Proceedings of the AAAI Conference on Artificial Intelligence, volume 35, 4027–4035.
- Feizabadi, J. 2022. Machine learning demand forecasting and supply chain performance. International Journal of Logistics Research and Applications, 25(2): 119–142.
- Exploring applications of Machine Learning for supply chain management. In 2021 Third International Conference on Transportation and Smart Technologies (TST), 46–52. IEEE.
- Dynamic simulation of the supply chain for a short life cycle product—Lessons from the Tamagotchi case. Computers & Operations Research, 31(7): 1097–1114.
- Long short-term memory. Neural computation, 9(8): 1735–1780.
- Demand forecasting in supply chain management using different deep learning methods. In Demand forecasting and order planning in supply chains and humanitarian logistics, 140–170. IGI Global.
- Semi-Supervised Classification with Graph Convolutional Networks. In ICLR.
- A machine learning approach for predicting hidden links in supply chain with graph neural networks. International Journal of Production Research, 60(17): 5380–5393.
- End-to-End Constrained Optimization Learning: A Survey. arXiv:2103.16378.
- Li, T. 2021. Algorithm optimization of large-scale supply chain design based on FPGA and neural network. Microprocessors and Microsystems, 81: 103790.
- Diffusion Convolutional Recurrent Neural Network: Data-Driven Traffic Forecasting. arXiv:1707.01926.
- Demand forecasting using ensemble learning for effective scheduling of logistic orders. In Advances in Artificial Intelligence, Software and Systems Engineering: Proceedings of the AHFE 2021 Virtual Conferences on Human Factors in Software and Systems Engineering, Artificial Intelligence and Social Computing, and Energy, July 25-29, 2021, USA, 313–321. Springer.
- Comparison of artificial neural networks learning methods to evaluate supply chain performance. Gestão & Produção, 28.
- Defining supply chain management. Journal of Business logistics, 22(2): 1–25.
- An Improved Neural Approaches for Forecasting Demand in Supply Chain Management. International Journal of Computer Applications, 975: 8887.
- k-Nearest Neighbor Classification, 83–106. New York, NY: Springer New York. ISBN 978-0-387-88615-2.
- Mapping supply chain collaboration research: a machine learning-based literature review. International Journal of Logistics Research and Applications, 1–29.
- Evaluation of deep learning with long short-term memory networks for time series forecasting in supply chain management. Procedia CIRP, 99: 604–609.
- A Multimodal Anomaly Detector for Robot-Assisted Feeding Using an LSTM-based Variational Autoencoder. arXiv:1711.00614.
- Simultaneous decision making for stochastic multi-echelon inventory optimization with deep neural networks as decision makers. arXiv preprint arXiv:2006.05608.
- Reinsel, G. C. 1993. Vector ARMA Time Series Models and Forecasting, 21–51. New York, NY: Springer US. ISBN 978-1-4684-0198-1.
- PyTorch Geometric Temporal: Spatiotemporal Signal Processing with Neural Machine Learning Models. In Proceedings of the 30th ACM International Conference on Information and Knowledge Management, 4564–4573.
- Improving the efficiency of manufacturing supply chain using system dynamic simulation. Jurnal Teknologi, 69(2): 10–11113.
- Structured Sequence Modeling with Graph Convolutional Recurrent Networks. arXiv:1612.07659.
- CNN model optimization and intelligent balance model for material demand forecast. International Journal of System Assurance Engineering and Management, 13(Suppl 3): 978–986.
- Demand forecasting using random forest and artificial neural network for supply chain management. In Computational Collective Intelligence: 11th International Conference, ICCCI 2019, Hendaye, France, September 4–6, 2019, Proceedings, Part I 11, 328–339. Springer.
- Graph Attention Networks. In ICLR.
- Applications of artificial intelligence and machine learning within supply chains: systematic review and future research directions. Journal of Modelling in Management, 17(3): 916–940.
- Weisfeiler-Lehman Neural Machine for Link Prediction. Proceedings of the 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining.
- Link prediction based on graph neural networks. Advances in neural information processing systems, 31.
- Temporal Graph Convolutional Network for Urban Traffic Flow Prediction Method. ArXiv, abs/1811.05320.
- Demand forecasting with supply-chain information and machine learning: Evidence in the pharmaceutical industry. Production and Operations Management, 30(9): 3231–3252.
- Prediction models of demand in supply chain. Procedia computer science, 177: 462–467.
- Azmine Toushik Wasi (24 papers)
- MD Shafikul Islam (4 papers)
- Adipto Raihan Akib (2 papers)