量子分类器的迁移学习:一个信息论的泛化分析

Sharu Theresa Jose, O. Simeone
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引用次数: 2

摘要

在经典输入上运行的量子机器学习模型的关键组成部分是将输入映射到量子态的嵌入电路的设计。本文研究了一种迁移学习设置,其中经典到量子嵌入由任意参数量子电路进行,该电路基于源任务的数据进行预训练。在运行时,基于感兴趣的目标任务的数据对嵌入的二进制量子分类器进行优化。结果分类器的平均超额风险,即最优性差距,取决于源任务和目标任务的相似程度。我们引入了一种新的度量二元量子分类任务之间(非)相似度的方法,即迹距。根据所提出的任务(非)相似度度量、源任务和目标任务下经典输入与量子嵌入之间的两个r互信息项以及源任务下量子嵌入与分类器组合空间的复杂性度量,推导了最优性差距的上界。通过一个简单的二值分类实例验证了理论结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer Learning for Quantum Classifiers: An Information-Theoretic Generalization Analysis
A key component of a quantum machine learning model operating on classical inputs is the design of an embedding circuit mapping inputs to a quantum state. This paper studies a transfer learning setting in which classical-to-quantum embedding is carried out by an arbitrary parametric quantum circuit that is pre-trained based on data from a source task. At run time, a binary quantum classifier of the embedding is optimized based on data from the target task of interest. The average excess risk, i.e., the optimality gap, of the resulting classifier depends on how (dis)similar the source and target tasks are. We introduce a new measure of (dis)similarity between the binary quantum classification tasks via the trace distances. An upper bound on the optimality gap is derived in terms of the proposed task (dis)similarity measure, two Rényi mutual information terms between classical input and quantum embedding under source and target tasks, as well as a measure of complexity of the combined space of quantum embeddings and classifiers under the source task. The theoretical results are validated on a simple binary classification example.
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