Evolutionary Optimization for Designing Variational Quantum Circuits with High Model Capacity
- URL: http://arxiv.org/abs/2412.12484v1
- Date: Tue, 17 Dec 2024 02:40:35 GMT
- Title: Evolutionary Optimization for Designing Variational Quantum Circuits with High Model Capacity
- Authors: Samuel Yen-Chi Chen,
- Abstract summary: The design of high-performance quantum machine learning (QML) models requires expert-level knowledge.
Key challenges include the design of data encoding mechanisms and parameterized quantum circuits.
We propose a novel method that encodes quantum circuit architecture information to enable the evolution of quantum circuit designs.
- Score: 3.6881738506505988
- License:
- Abstract: Recent advancements in quantum computing (QC) and machine learning (ML) have garnered significant attention, leading to substantial efforts toward the development of quantum machine learning (QML) algorithms to address a variety of complex challenges. The design of high-performance QML models, however, requires expert-level knowledge, posing a significant barrier to the widespread adoption of QML. Key challenges include the design of data encoding mechanisms and parameterized quantum circuits, both of which critically impact the generalization capabilities of QML models. We propose a novel method that encodes quantum circuit architecture information to enable the evolution of quantum circuit designs. In this approach, the fitness function is based on the effective dimension, allowing for the optimization of quantum circuits towards higher model capacity. Through numerical simulations, we demonstrate that the proposed method is capable of discovering variational quantum circuit architectures that offer improved learning capabilities, thereby enhancing the overall performance of QML models for complex tasks.
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