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Main Authors: Ghoshal, Abhijeet, Li, Yan, Menon, Syam, Sarkar, Sumit
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.08055
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author Ghoshal, Abhijeet
Li, Yan
Menon, Syam
Sarkar, Sumit
author_facet Ghoshal, Abhijeet
Li, Yan
Menon, Syam
Sarkar, Sumit
contents Quantum devices use qubits to represent information, which allows them to exploit important properties from quantum physics, specifically superposition and entanglement. As a result, quantum computers have the potential to outperform the most advanced classical computers. In recent years, quantum algorithms have shown hints of this promise, and many algorithms have been proposed for the quantum domain. There are two key hurdles to solving difficult real-world problems on quantum computers. The first is on the hardware front -- the number of qubits in the most advanced quantum systems is too small to make the solution of large problems practical. The second involves the algorithms themselves -- as quantum computers use qubits, the algorithms that work there are fundamentally different from those that work on traditional computers. As a result of these constraints, research has focused on developing approaches to solve small versions of problems as proofs of concept -- recognizing that it would be possible to scale these up once quantum devices with enough qubits become available. Our objective in this paper is along the same lines. We present a quantum approach to solve a well-studied problem in the context of data sharing. This heuristic uses the well-known Quantum Approximate Optimization Algorithm (QAOA). We present results on experiments involving small datasets to illustrate how the problem could be solved using quantum algorithms. The results show that the method has potential and provide answers close to optimal. At the same time, we realize there are opportunities for improving the method further.
format Preprint
id arxiv_https___arxiv_org_abs_2402_08055
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Quantum Algorithm Based Heuristic to Hide Sensitive Itemsets
Ghoshal, Abhijeet
Li, Yan
Menon, Syam
Sarkar, Sumit
Quantum Physics
Distributed, Parallel, and Cluster Computing
Emerging Technologies
Quantum devices use qubits to represent information, which allows them to exploit important properties from quantum physics, specifically superposition and entanglement. As a result, quantum computers have the potential to outperform the most advanced classical computers. In recent years, quantum algorithms have shown hints of this promise, and many algorithms have been proposed for the quantum domain. There are two key hurdles to solving difficult real-world problems on quantum computers. The first is on the hardware front -- the number of qubits in the most advanced quantum systems is too small to make the solution of large problems practical. The second involves the algorithms themselves -- as quantum computers use qubits, the algorithms that work there are fundamentally different from those that work on traditional computers. As a result of these constraints, research has focused on developing approaches to solve small versions of problems as proofs of concept -- recognizing that it would be possible to scale these up once quantum devices with enough qubits become available. Our objective in this paper is along the same lines. We present a quantum approach to solve a well-studied problem in the context of data sharing. This heuristic uses the well-known Quantum Approximate Optimization Algorithm (QAOA). We present results on experiments involving small datasets to illustrate how the problem could be solved using quantum algorithms. The results show that the method has potential and provide answers close to optimal. At the same time, we realize there are opportunities for improving the method further.
title A Quantum Algorithm Based Heuristic to Hide Sensitive Itemsets
topic Quantum Physics
Distributed, Parallel, and Cluster Computing
Emerging Technologies
url https://arxiv.org/abs/2402.08055