Papers
arxiv:2606.27821

Parameter-Efficient Quantum-Inspired Fast Weight Programmers for Traffic-Matrix Forecasting

Published on Jun 26
· Submitted by
Jiun-Cheng Jiang
on Jul 3
Authors:
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Abstract

Quantum-inspired recurrent models using gated QKAN-FWPs demonstrate superior forecasting accuracy with reduced computational requirements compared to traditional LSTM networks for traffic matrix prediction.

Traffic matrices (TMs) capture network-wide origin-destination demand and are central to traffic engineering, yet accurate whole-matrix forecasting remains challenging when prediction must be performed under the memory, update, and training-budget constraints of online network control. This paper investigates whether compact quantum-inspired recurrent models can provide effective TM forecasts without relying on dedicated graph, transformer, or diffusion modules. We adapt gated quantum-inspired Kolmogorov-Arnold network fast-weight programmers (QKAN-FWPs) to direct multi-step Abilene TM forecasting, where each model predicts the next 20 five-minute frames of a 144-channel origin-destination (OD) matrix from a two-hour history. We benchmark three QKAN placement variants against a matched-size long short-term memory (LSTM) network, a larger LSTM, and a classical gated fast-weight programmer under a shared fixed-budget training protocol. Among the evaluated recurrent models, G-QKANFWP achieves the best pooled root-mean-square error (RMSE), while using only 22.4% of the larger LSTM. It also outperforms both the matched-size LSTM and the classical G-FWP baseline, indicating that the gain is not due to gated fast-weight framework alone. Convergence and channel-wise analyses further show that the quantum-inspired variants obtain lower validation-loss area under the learning curve (AULC) than matched-size recurrent baselines, while G-QKANFWP and GQKAN-FWP achieve substantially more OD-channel wins. These results identify a classical slow programmer with a quantum-inspired fast programmer as a promising accuracy-efficiency design for resource-conscious network traffic-matrix forecasting.

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Paper submitter

This paper explores whether compact quantum-inspired recurrent models can efficiently forecast full network traffic matrices under realistic resource constraints. The authors adapt gated quantum-inspired Kolmogorov–Arnold Network Fast-Weight Programmers, or QKAN-FWPs, to predict the next 20 five-minute Abilene traffic-matrix frames from a two-hour history, covering 144 origin–destination traffic channels. Instead of relying on graph, transformer, vision, or diffusion modules, the study isolates lightweight recurrent fast-weight designs and compares three QKAN placement variants against matched-size and larger LSTMs plus a classical gated FWP baseline. The best model, G-QKANFWP, achieves the lowest pooled RMSE while using only 22.4% of the parameters of the larger LSTM, and it also outperforms the classical G-FWP baseline, suggesting that the quantum-inspired fast readout contributes beyond the gated fast-weight mechanism alone. The results position G-QKANFWP as a promising accuracy–efficiency trade-off for online traffic-matrix forecasting in edge, cloud-edge, and network-control settings.

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