QUANT-PHLGApr 10, 2024

A Modified Depolarization Approach for Efficient Quantum Machine Learning

arXiv:2404.07330v18 citationsh-index: 13Mathematics
Originality Incremental advance
AI Analysis

This incremental improvement addresses efficiency for quantum machine learning simulations in the NISQ era.

They tackled the computational expense of simulating quantum noise in the NISQ era by proposing a modified depolarization channel representation, which reduced complexity from six to four matrix multiplications per execution while maintaining model accuracy on the Iris dataset.

Quantum Computing in the Noisy Intermediate-Scale Quantum (NISQ) era has shown promising applications in machine learning, optimization, and cryptography. Despite the progress, challenges persist due to system noise, errors, and decoherence that complicate the simulation of quantum systems. The depolarization channel is a standard tool for simulating a quantum system's noise. However, modeling such noise for practical applications is computationally expensive when we have limited hardware resources, as is the case in the NISQ era. We propose a modified representation for a single-qubit depolarization channel with two Kraus operators based only on X and Z Pauli matrices. Our approach reduces the computational complexity from six to four matrix multiplications per execution of a channel. Experiments on a Quantum Machine Learning (QML) model on the Iris dataset across various circuit depths and depolarization rates validate that our approach maintains the model's accuracy while improving efficiency. This simplified noise model enables more scalable simulations of quantum circuits under depolarization, advancing capabilities in the NISQ era.

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