Adaptive Sampling for Probabilistic Forecasting under Distribution Shift
Masserano, Luca, Rangapuram, Syama Sundar, Kapoor, Shubham, Nirwan, Rajbir Singh, Park, Youngsuk, Bohlke-Schneider, Michael
–arXiv.org Artificial Intelligence
The world is not static: This causes real-world time series to change over time through external, and potentially disruptive, events such as macroeconomic cycles or the COVID-19 pandemic. We present an adaptive sampling strategy that selects the part of the time series history that is relevant for forecasting. We achieve this by learning a discrete distribution over relevant time steps by Bayesian optimization. We instantiate this idea with a two-step method that is pre-trained with uniform sampling and then training a lightweight adaptive architecture with adaptive sampling. We show with synthetic and real-world experiments that this method adapts to distribution shift and significantly reduces the forecasting error of the base model for three out of five datasets.
arXiv.org Artificial Intelligence
Feb-23-2023
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