A Primer on Kolmogorov-Arnold Networks (KANs) for Probabilistic Time Series Forecasting
By: Cristian J. Vaca-Rubio , Roberto Pereira , Luis Blanco and more
Potential Business Impact:
Predicts future traffic with less guessing.
This work introduces Probabilistic Kolmogorov-Arnold Network (P-KAN), a novel probabilistic extension of Kolmogorov-Arnold Networks (KANs) for time series forecasting. By replacing scalar weights with spline-based functional connections and directly parameterizing predictive distributions, P-KANs offer expressive yet parameter-efficient models capable of capturing nonlinear and heavy-tailed dynamics. We evaluate P-KANs on satellite traffic forecasting, where uncertainty-aware predictions enable dynamic thresholding for resource allocation. Results show that P-KANs consistently outperform Multi Layer Perceptron (MLP) baselines in both accuracy and calibration, achieving superior efficiency-risk trade-offs while using significantly fewer parameters. We build up P-KANs on two distributions, namely Gaussian and Student-t distributions. The Gaussian variant provides robust, conservative forecasts suitable for safety-critical scenarios, whereas the Student-t variant yields sharper distributions that improve efficiency under stable demand. These findings establish P-KANs as a powerful framework for probabilistic forecasting with direct applicability to satellite communications and other resource-constrained domains.
Similar Papers
A Practitioner's Guide to Kolmogorov-Arnold Networks
Machine Learning (CS)
Makes computer learning smarter and easier to understand.
Physics-informed time series analysis with Kolmogorov-Arnold Networks under Ehrenfest constraints
Machine Learning (CS)
Predicts how tiny things move much faster.
AR-KAN: Autoregressive-Weight-Enhanced Kolmogorov-Arnold Network for Time Series Forecasting
Machine Learning (CS)
Predicts future events better than other smart programs.