量子机器学习经典数据的量子嵌入

G. Luca, Yinong Chen
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引用次数: 1

摘要

量子机器学习领域的一个主要研究领域是对损失情况的分析,特别是变分量子算法。这些工作通常为各种分析和量子嵌入策略提供了界限和概括。这些分析包括诸如Hessian和Fisher信息矩阵以及广义三角多项式等方法。然而,许多这样的评论往往依赖于实践中的旋转编码或关注少数不同的方法。本工作的目标是统计分析量子机器学习模型的实验结果,该模型采用了各种不同的量子嵌入方法,包括相关工作中涉及的方法,以及测量基础对模型的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantum Embeddings of Classical Data for Quantum Machine Learning
A major area of research in the field of quantum machine learning is the analysis of the loss landscape, particularly of variational quantum algorithms. These works often provide bounds and generalizations for various ansatzes and quantum embedding strategies. These analyses include approaches such as the Hessian and Fisher information matrices as well as generalized trigonometric polynomials. However, many such reviews often rely on a rotational encoding in practice or focus on few different approaches. The goal of this work is to statistically analyze experimental results from a quantum machine learning model that employs various different quantum embedding approaches, including those covered in related work, as well as the effect of measurement basis on the model.
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