2024
DOI: 10.3390/math12193078
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Quantifying the Uncertainty of Reservoir Computing: Confidence Intervals for Time-Series Forecasting

Laia Domingo,
Mar Grande,
Florentino Borondo
et al.

Abstract: Recently, reservoir computing (RC) has emerged as one of the most effective algorithms to model and forecast volatile and chaotic time series. In this paper, we aim to contribute to the understanding of the uncertainty associated with the predictions made by RC models and to propose a methodology to generate RC prediction intervals. As an illustration, we analyze the error distribution for the RC model when predicting the price time series of several agri-commodities. Results show that the error distributions … Show more

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