FastODT: A tree-based framework for efficient continual learning
arXiv cs.LG / 3/17/2026
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Key Points
- FastODT introduces an oblivious tree-based model with a Hoeffding bound to control growth, enabling online continual learning under constrained resources.
- The approach targets non-stationary domains such as energy time series, weather monitoring, and environmental sensing, emphasizing rapid learning, quick inference, and memory efficiency.
- Extensive experiments show FastODT performs competitively with, and often surpasses, existing online and batch learning methods while using less computation and memory.
- The framework provides a scalable, resource-aware foundation for deployment in real-world settings where ongoing adaptation and low retraining are essential.
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