Chattopadhyay, S., Paliwal, P., Narasimhan, S. S., Agarwal, S., & Chinchali, S. (2024). CONTEXT MATTERS: LEVERAGING CONTEXTUAL FEATURES FOR TIME SERIES FORECASTING. arXiv preprint arXiv:2410.12672.
This paper introduces ContextFormer, a novel method for integrating diverse multimodal contextual information into existing time series forecasting models to enhance their accuracy. The authors aim to address the limitations of current state-of-the-art forecasting models, which primarily rely on historical time series data and often fail to incorporate valuable contextual factors.
ContextFormer employs a plug-and-play approach, allowing its integration with any pre-trained forecasting model. It consists of a metadata embedding module, a temporal embedding module, and multiple cross-attention blocks. The metadata embedding module processes categorical and continuous contextual features, while the temporal embedding module extracts temporal patterns from timestamps. Cross-attention layers then combine these embeddings with the hidden state representations of the time series history to generate context-aware forecasts. The authors validate their approach by fine-tuning pre-trained PatchTST and iTransformer models on five real-world datasets from different domains, comparing their performance to the context-agnostic baselines and a large pre-trained forecasting model, Chronos.
ContextFormer provides a powerful and flexible framework for incorporating multimodal contextual information into time series forecasting models, leading to substantial accuracy improvements. The plug-and-play design and fine-tuning approach ensure ease of implementation and performance guarantees.
This research significantly contributes to the field of time series forecasting by highlighting the importance of contextual information and providing a practical method for its integration. The demonstrated improvements in forecasting accuracy have significant implications for various domains, including finance, energy, and environmental science.
The paper acknowledges the lack of a principled method for identifying the most relevant metadata features for forecasting as a limitation. Future research could explore methods for automated metadata selection and investigate the use of other contextual modalities, such as images and videos. Additionally, exploring a two-step forecasting pipeline, where metadata is forecasted first, is suggested as a potential avenue for further enhancing forecasting accuracy.
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by Sameep Chatt... lúc arxiv.org 10-17-2024
https://arxiv.org/pdf/2410.12672.pdfYêu cầu sâu hơn