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arxiv: 2602.21544 · v2 · pith:RQ5OUXI3new · submitted 2026-02-25 · 🪐 quant-ph

Efficient time-series prediction on NISQ devices via time-delayed quantum extreme learning machine

classification 🪐 quant-ph
keywords quantumtd-qelmlearningnisqpredictiontime-seriesdevicesefficient
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We proposed a time-delayed quantum extreme learning machine (TD-QELM) for efficient time-series prediction on noisy intermediate-scale quantum (NISQ) devices. By encoding multiple past inputs simultaneously, TD-QELM achieves shallow circuit depth independent of sequence length, thereby, mitigating noise accumulation and reducing computational complexity. Experiments using the NARMA benchmark on both noiseless simulations and IBM's 127-qubit processor demonstrate that TD-QELM consistently outperforms conventional quantum reservoir computing in prediction accuracy and noise robustness. These results highlight TD-QELM as a practical and scalable framework for time-series learning on current NISQ hardware.

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