Quantum Fourier Iterative Amplitude Estimation
Jorge J. Mart\'inez de Lejarza, Michele Grossi, Leandro Cieri and, Germ\'an Rodrigo

TL;DR
The paper introduces Quantum Fourier Iterative Amplitude Estimation (QFIAE), a quantum algorithm that combines Fourier analysis, quantum neural networks, and amplitude estimation to efficiently approximate Monte Carlo integrals with high accuracy.
Contribution
QFIAE is a novel quantum algorithm that decomposes functions into Fourier series using PQCs and estimates integrals without numerical Fourier coefficient integration, reducing computational load.
Findings
QFIAE achieves accuracy comparable to other quantum methods.
The method maintains quadratic speedup with IQAE.
Accuracy improves with more Fourier series terms.
Abstract
Monte Carlo integration is a widely used numerical method for approximating integrals, which is often computationally expensive. In recent years, quantum computing has shown promise for speeding up Monte Carlo integration, and several quantum algorithms have been proposed to achieve this goal. In this paper, we present an application of Quantum Machine Learning (QML) and Grover's amplification algorithm to build a new tool for estimating Monte Carlo integrals. Our method, which we call Quantum Fourier Iterative Amplitude Estimation (QFIAE), decomposes the target function into its Fourier series using a Parametrized Quantum Circuit (PQC), specifically a Quantum Neural Network (QNN), and then integrates each trigonometric component using Iterative Quantum Amplitude Estimation (IQAE). This approach builds on Fourier Quantum Monte Carlo Integration (FQMCI) method, which also decomposes the…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Parallel Computing and Optimization Techniques
