A mathematical model for a universal digital quantum computer with an application to the Grover-Rudolph algorithm
- URL: http://arxiv.org/abs/2503.13388v4
- Date: Tue, 22 Apr 2025 18:35:35 GMT
- Title: A mathematical model for a universal digital quantum computer with an application to the Grover-Rudolph algorithm
- Authors: Antonio Falcó, Daniela Falcó--Pomares, Hermann G. Matthies,
- Abstract summary: We develop a novel framework for universal digital quantum computation using algebraic probability theory.<n>We define quantum circuits as finite sequences of elementary quantum gates.<n>We design a quantum circuit that approximates a given probability density function.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this work, we develop a novel mathematical framework for universal digital quantum computation using algebraic probability theory. We rigorously define quantum circuits as finite sequences of elementary quantum gates and establish their role in implementing unitary transformations. A key result demonstrates that every unitary matrix in \(\mathrm{U}(N)\) can be expressed as a product of elementary quantum gates, leading to the concept of a universal dictionary for quantum computation. We apply this framework to the construction of quantum circuits that encode probability distributions, focusing on the Grover-Rudolph algorithm. By leveraging controlled quantum gates and rotation matrices, we design a quantum circuit that approximates a given probability density function. Numerical simulations, conducted using Qiskit, confirm the theoretical predictions and validate the effectiveness of our approach. These results provide a rigorous foundation for quantum circuit synthesis within an algebraic probability framework and offer new insights into the encoding of probability distributions in quantum algorithms. Potential applications include quantum machine learning, circuit optimization, and experimental implementations on real quantum hardware.
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