随机反应系统的主动模型学习(扩展版)

IF 2 3区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING Software and Systems Modeling Pub Date : 2024-03-23 DOI:10.1007/s10270-024-01158-0
Edi Muškardin, Martin Tappler, Bernhard K. Aichernig, Ingo Pill
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引用次数: 0

摘要

黑盒系统本质上是难以验证的。许多验证技术(如模型检查)都需要正式模型作为基础。然而,这类模型往往并不存在,或者可能已经过时。主动自动机学习可以从系统交互中自动推断出正式模型,从而帮助解决这一问题。因此,自动机学习近年来受到了验证界的广泛关注。这导致了各种效率的提高,为工业应用铺平了道路。然而,大多数研究都集中在确定性系统上。在本文中,我们提出了一种高效学习随机反应系统模型的方法。我们的方法将基于 \(L^*\) 的学习方法应用于马尔可夫决策过程,并将其改进和扩展到随机 Mealy 机器。与之前的工作相比,我们的评估表明,针对随机梅里机提出的优化和调整可以将学习成本降低一个数量级,同时提高所学模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Active model learning of stochastic reactive systems (extended version)

Black-box systems are inherently hard to verify. Many verification techniques, like model checking, require formal models as a basis. However, such models often do not exist, or they might be outdated. Active automata learning helps to address this issue by offering to automatically infer formal models from system interactions. Hence, automata learning has been receiving much attention in the verification community in recent years. This led to various efficiency improvements, paving the way toward industrial applications. Most research, however, has been focusing on deterministic systems. In this article, we present an approach to efficiently learn models of stochastic reactive systems. Our approach adapts \(L^*\)-based learning for Markov decision processes, which we improve and extend to stochastic Mealy machines. When compared with previous work, our evaluation demonstrates that the proposed optimizations and adaptations to stochastic Mealy machines can reduce learning costs by an order of magnitude while improving the accuracy of learned models.

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来源期刊
Software and Systems Modeling
Software and Systems Modeling 工程技术-计算机:软件工程
CiteScore
6.00
自引率
20.00%
发文量
104
审稿时长
>12 weeks
期刊介绍: We invite authors to submit papers that discuss and analyze research challenges and experiences pertaining to software and system modeling languages, techniques, tools, practices and other facets. The following are some of the topic areas that are of special interest, but the journal publishes on a wide range of software and systems modeling concerns: Domain-specific models and modeling standards; Model-based testing techniques; Model-based simulation techniques; Formal syntax and semantics of modeling languages such as the UML; Rigorous model-based analysis; Model composition, refinement and transformation; Software Language Engineering; Modeling Languages in Science and Engineering; Language Adaptation and Composition; Metamodeling techniques; Measuring quality of models and languages; Ontological approaches to model engineering; Generating test and code artifacts from models; Model synthesis; Methodology; Model development tool environments; Modeling Cyberphysical Systems; Data intensive modeling; Derivation of explicit models from data; Case studies and experience reports with significant modeling lessons learned; Comparative analyses of modeling languages and techniques; Scientific assessment of modeling practices
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