Quantum Optimisation for Continuous Multivariable Functions by a
Structured Search
- URL: http://arxiv.org/abs/2210.06227v1
- Date: Wed, 12 Oct 2022 14:16:06 GMT
- Title: Quantum Optimisation for Continuous Multivariable Functions by a
Structured Search
- Authors: Edric Matwiejew, Jason Pye, Jingbo B. Wang
- Abstract summary: Quantum variational algorithms leverage quantum superposition and entanglement to optimise over exponentially large solution spaces.
We show that quantum variational algorithms can efficiently optimise continuous multivariable functions by exploiting general structural properties of a discretised continuous solution space.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Solving optimisation problems is a promising near-term application of quantum
computers. Quantum variational algorithms leverage quantum superposition and
entanglement to optimise over exponentially large solution spaces using an
alternating sequence of classically tunable unitaries. However, prior work has
primarily addressed discrete optimisation problems. In addition, these
algorithms have been designed generally under the assumption of an unstructured
solution space, which constrains their speedup to the theoretical limits for
the unstructured Grover's quantum search algorithm. In this paper, we show that
quantum variational algorithms can efficiently optimise continuous
multivariable functions by exploiting general structural properties of a
discretised continuous solution space with a convergence that exceeds the
limits of an unstructured quantum search. We introduce the Quantum
Multivariable Optimisation Algorithm (QMOA) and demonstrate its advantage over
pre-existing methods, particularly when optimising high-dimensional and
oscillatory functions.
Related papers
- Out of the Loop: Structural Approximation of Optimisation Landscapes and non-Iterative Quantum Optimisation [3.9857517408503567]
Quantum Approximate optimisation algorithm (qaoa) is a widely studied quantum-classical iterative for optimisation.
We introduce a new algorithmic variant based on non-iterative computation that is instance-independent, but problem-specific.
Our approach is based on proving a long-standing conjecture regarding quantum-independent structures in qaoa.
arXiv Detail & Related papers (2024-08-12T21:02:58Z) - Performant near-term quantum combinatorial optimization [1.1999555634662633]
We present a variational quantum algorithm for solving optimization problems with linear-depth circuits.
Our algorithm uses an ansatz composed of Hamiltonian generators designed to control each term in the target quantum function.
We conclude our performant and resource-minimal approach is a promising candidate for potential quantum computational advantages.
arXiv Detail & Related papers (2024-04-24T18:49:07Z) - Randomized Benchmarking of Local Zeroth-Order Optimizers for Variational
Quantum Systems [65.268245109828]
We compare the performance of classicals across a series of partially-randomized tasks.
We focus on local zeroth-orders due to their generally favorable performance and query-efficiency on quantum systems.
arXiv Detail & Related papers (2023-10-14T02:13:26Z) - Quantum algorithms: A survey of applications and end-to-end complexities [90.05272647148196]
The anticipated applications of quantum computers span across science and industry.
We present a survey of several potential application areas of quantum algorithms.
We outline the challenges and opportunities in each area in an "end-to-end" fashion.
arXiv Detail & Related papers (2023-10-04T17:53:55Z) - Quantum algorithm for robust optimization via stochastic-gradient online
learning [0.0]
We consider the online robust optimization meta-algorithm by Ben-Tal et al. and show that for a large range of subgradients, this algorithm has the same guarantee as the original non-stochastic version.
We develop a quantum version of this algorithm and show that an at most quadratic improvement in terms of the dimension can be achieved.
arXiv Detail & Related papers (2023-04-05T07:25:07Z) - Constrained Optimization via Quantum Zeno Dynamics [23.391640416533455]
We introduce a technique that uses quantum Zeno dynamics to solve optimization problems with multiple arbitrary constraints, including inequalities.
We show that the dynamics of quantum optimization can be efficiently restricted to the in-constraint subspace on a fault-tolerant quantum computer.
arXiv Detail & Related papers (2022-09-29T18:00:40Z) - Quantum Error Mitigation Relying on Permutation Filtering [84.66087478797475]
We propose a general framework termed as permutation filters, which includes the existing permutation-based methods as special cases.
We show that the proposed filter design algorithm always converges to the global optimum, and that the optimal filters can provide substantial improvements over the existing permutation-based methods.
arXiv Detail & Related papers (2021-07-03T16:07:30Z) - Variational Quantum Optimization with Multi-Basis Encodings [62.72309460291971]
We introduce a new variational quantum algorithm that benefits from two innovations: multi-basis graph complexity and nonlinear activation functions.
Our results in increased optimization performance, two increase in effective landscapes and a reduction in measurement progress.
arXiv Detail & Related papers (2021-06-24T20:16:02Z) - Quantum mean value approximator for hard integer value problems [19.4417702222583]
We show that an optimization can be improved substantially by using an approximation rather than the exact expectation.
Together with efficient classical sampling algorithms, a quantum algorithm with minimal gate count can thus improve the efficiency of general integer-value problems.
arXiv Detail & Related papers (2021-05-27T13:03:52Z) - Adaptive pruning-based optimization of parameterized quantum circuits [62.997667081978825]
Variisy hybrid quantum-classical algorithms are powerful tools to maximize the use of Noisy Intermediate Scale Quantum devices.
We propose a strategy for such ansatze used in variational quantum algorithms, which we call "Efficient Circuit Training" (PECT)
Instead of optimizing all of the ansatz parameters at once, PECT launches a sequence of variational algorithms.
arXiv Detail & Related papers (2020-10-01T18:14:11Z) - Space-efficient binary optimization for variational computing [68.8204255655161]
We show that it is possible to greatly reduce the number of qubits needed for the Traveling Salesman Problem.
We also propose encoding schemes which smoothly interpolate between the qubit-efficient and the circuit depth-efficient models.
arXiv Detail & Related papers (2020-09-15T18:17:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.