QUANT-PHAIITLGJun 6, 2023

Transition Role of Entangled Data in Quantum Machine Learning

arXiv:2306.03481v223 citationsh-index: 24
AI Analysis

This provides critical guidance for designing quantum machine learning protocols, especially for early-stage quantum computers with limited resources, addressing a foundational gap in understanding entanglement's role.

The study tackled the unclear impact of data entanglement on quantum machine learning performance by establishing a quantum no-free-lunch theorem, proving that entanglement reduces prediction error or training data size with sufficient measurements but can increase error with few measurements.

Entanglement serves as the resource to empower quantum computing. Recent progress has highlighted its positive impact on learning quantum dynamics, wherein the integration of entanglement into quantum operations or measurements of quantum machine learning (QML) models leads to substantial reductions in training data size, surpassing a specified prediction error threshold. However, an analytical understanding of how the entanglement degree in data affects model performance remains elusive. In this study, we address this knowledge gap by establishing a quantum no-free-lunch (NFL) theorem for learning quantum dynamics using entangled data. Contrary to previous findings, we prove that the impact of entangled data on prediction error exhibits a dual effect, depending on the number of permitted measurements. With a sufficient number of measurements, increasing the entanglement of training data consistently reduces the prediction error or decreases the required size of the training data to achieve the same prediction error. Conversely, when few measurements are allowed, employing highly entangled data could lead to an increased prediction error. The achieved results provide critical guidance for designing advanced QML protocols, especially for those tailored for execution on early-stage quantum computers with limited access to quantum resources.

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