QUANT-PHAIAug 6, 2025

Benchmarking Quantum and Classical Sequential Models for Urban Telecommunication Forecasting

arXiv:2508.04488v22 citationsh-index: 2
Originality Synthesis-oriented
AI Analysis

This work addresses forecasting urban telecommunication patterns for potential applications in network management, but it is incremental as it evaluates existing quantum-inspired methods on a specific dataset.

The study compared classical and quantum-inspired sequential models for forecasting urban SMS activity, finding that quantum enhancements are not universally beneficial and their effectiveness depends on task and architecture, with models showing varying sensitivities to input sequence lengths.

In this study, we evaluate the performance of classical and quantum-inspired sequential models in forecasting univariate time series of incoming SMS activity (SMS-in) using the Milan Telecommunication Activity Dataset. Due to data completeness limitations, we focus exclusively on the SMS-in signal for each spatial grid cell. We compare five models, LSTM (baseline), Quantum LSTM (QLSTM), Quantum Adaptive Self-Attention (QASA), Quantum Receptance Weighted Key-Value (QRWKV), and Quantum Fast Weight Programmers (QFWP), under varying input sequence lengths (4, 8, 12, 16, 32 and 64). All models are trained to predict the next 10-minute SMS-in value based solely on historical values within a given sequence window. Our findings indicate that different models exhibit varying sensitivities to sequence length, suggesting that quantum enhancements are not universally advantageous. Rather, the effectiveness of quantum modules is highly dependent on the specific task and architectural design, reflecting inherent trade-offs among model size, parameterization strategies, and temporal modeling capabilities.

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