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arXiv 提交日期: 2026-02-16
📄 Abstract - Kernel-based optimization of measurement operators for quantum reservoir computers

Finding optimal measurement operators is crucial for the performance of quantum reservoir computers (QRCs), since they employ a fixed quantum feature map. We formulate the training of both stateless (quantum extreme learning machines, QELMs) and stateful (memory dependent) QRCs in the framework of kernel ridge regression. This approach renders an optimal measurement operator that minimizes prediction error for a given reservoir and training dataset. For large qubit numbers, this method is more efficient than the conventional training of QRCs. We discuss efficiency and practical implementation strategies, including Pauli basis decomposition and operator diagonalization, to adapt the optimal observable to hardware constraints. Numerical experiments on image classification and time series prediction tasks demonstrate the effectiveness of this approach, which can also be applied to other quantum ML models.

顶级标签: machine learning theory systems
详细标签: quantum reservoir computing kernel ridge regression measurement optimization quantum machine learning quantum feature map 或 搜索:

基于核方法的量子储层计算机测量算符优化 / Kernel-based optimization of measurement operators for quantum reservoir computers


1️⃣ 一句话总结

该研究提出了一种基于核岭回归的通用方法,用于高效地优化量子储层计算机的测量算符,从而在图像分类和时间序列预测等任务中显著提升模型性能,并适用于多种量子机器学习模型。

源自 arXiv: 2602.14677