QUANT-PHLGNov 29, 2023

Continuous optimization by quantum adaptive distribution search

arXiv:2311.17353v24 citationsh-index: 26
Originality Incremental advance
AI Analysis

This is an incremental improvement for quantum computing applications in optimization.

The paper tackles continuous optimization by integrating Grover adaptive search with CMA-ES into QuADS, resulting in fewer oracle calls and outperforming both methods in numerical experiments.

In this paper, we introduce the quantum adaptive distribution search (QuADS), a quantum continuous optimization algorithm that integrates Grover adaptive search (GAS) with the covariance matrix adaptation - evolution strategy (CMA-ES), a classical technique for continuous optimization. QuADS utilizes the quantum-based search capabilities of GAS and enhances them with the principles of CMA-ES for more efficient optimization. It employs a multivariate normal distribution for the initial state of the quantum search and repeatedly updates it throughout the optimization process. Our numerical experiments show that QuADS outperforms both GAS and CMA-ES. This is achieved through adaptive refinement of the initial state distribution rather than consistently using a uniform state, resulting in fewer oracle calls. This study presents an important step toward exploiting the potential of quantum computing for continuous optimization.

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