Automatic evolutionary design of quantum rule-based systems and applications to quantum reinforcement learning

IF 2.2 3区 物理与天体物理 Q1 PHYSICS, MATHEMATICAL Quantum Information Processing Pub Date : 2024-05-11 DOI:10.1007/s11128-024-04391-0
Manuel P. Cuéllar, M. C. Pegalajar, C. Cano
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Abstract

Explainable artificial intelligence is a research topic whose relevance has increased in recent years, especially with the advent of large machine learning models. However, very few attempts have been proposed to improve interpretability in the case of quantum artificial intelligence, and many existing quantum machine learning models in the literature can be considered almost as black boxes. In this article, we argue that an appropriate semantic interpretation of a given quantum circuit that solves a problem can be of interest to the user not only to certify the correct behavior of the learned model, but also to obtain a deeper insight into the problem at hand and its solution. We focus on decision-making problems that can be formulated as classification tasks and propose a method for learning quantum rule-based systems to solve them using evolutionary optimization algorithms. The approach is tested to learn rules that solve control and decision-making tasks in reinforcement learning environments, to provide interpretable agent policies that help to understand the internal dynamics of an unknown environment. Our results conclude that the learned policies are not only highly explainable, but can also help detect non-relevant features of problems and produce a minimal set of rules.

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量子规则系统的自动进化设计及其在量子强化学习中的应用
可解释的人工智能是一个研究课题,近年来,尤其是随着大型机器学习模型的出现,它的相关性与日俱增。然而,在量子人工智能方面,很少有人尝试提高可解释性,文献中现有的许多量子机器学习模型几乎可以被视为黑箱。在本文中,我们认为,对解决某个问题的给定量子电路进行适当的语义解释,不仅能证明所学模型的行为正确,还能让用户更深入地了解手头的问题及其解决方案。我们将重点放在可表述为分类任务的决策问题上,并提出了一种利用进化优化算法学习量子规则系统来解决这些问题的方法。我们对该方法进行了测试,以学习在强化学习环境中解决控制和决策任务的规则,提供可解释的代理策略,帮助理解未知环境的内部动态。我们的研究结果表明,学习到的策略不仅具有很高的可解释性,还能帮助检测问题的非相关特征,并生成最小的规则集。
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来源期刊
Quantum Information Processing
Quantum Information Processing 物理-物理:数学物理
CiteScore
4.10
自引率
20.00%
发文量
337
审稿时长
4.5 months
期刊介绍: Quantum Information Processing is a high-impact, international journal publishing cutting-edge experimental and theoretical research in all areas of Quantum Information Science. Topics of interest include quantum cryptography and communications, entanglement and discord, quantum algorithms, quantum error correction and fault tolerance, quantum computer science, quantum imaging and sensing, and experimental platforms for quantum information. Quantum Information Processing supports and inspires research by providing a comprehensive peer review process, and broadcasting high quality results in a range of formats. These include original papers, letters, broadly focused perspectives, comprehensive review articles, book reviews, and special topical issues. The journal is particularly interested in papers detailing and demonstrating quantum information protocols for cryptography, communications, computation, and sensing.
期刊最新文献
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