基于场景的规范中的紧急行为和隐含场景检测:一种机器学习方法

Munima Jahan, Zahra Shakeri Hossein Abad, B. Far
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引用次数: 5

摘要

场景通常用于软件需求建模。场景描述系统组件、用户和环境如何相互作用以完成系统功能。然而,需要几个场景来表示一个完整的系统行为,并且组合这些场景可能会生成与一些意外行为相关联的隐含场景(IS)。意外行为通常被称为紧急行为(EB),它在需求和设计阶段并不明显,但可能会降低服务质量和/或在执行过程中造成不可挽回的损害。在早期阶段检测和修复EB/IS可以节省部署成本,同时最大限度地减少运行时的风险。在本文中,我们提出了一种机器学习方法来建模和识别系统组件之间的交互,并验证哪些交互是安全的,哪些可能导致EB/IS。实验结果表明,该方法可以有效地检测不同类型的EB/IS,适用于大型系统。
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Detecting Emergent Behaviors and Implied Scenarios in Scenario-Based Specifications: A Machine Learning Approach
Scenarios are commonly used for software requirements modeling. Scenarios describe how system components, users and the environment interact to complete the system functionality. However, several scenarios are needed to represent a complete system behavior and combining the scenarios may generate implied scenarios (IS) that are associated with some unexpected behavior. The unexpected behavior is commonly known as Emergent Behavior (EB), which is not evident in the requirements and design phase but may degrade the quality of service and/or cause irreparable damage during execution. Detecting and fixing EB/IS in the early phases can save on deployment cost while minimizing the run-time hazards. In this paper, we present a machine learning approach to model and identify the interactions between system components and verify which interactions are safe and which may lead to EB/IS. The experimental result shows that our approach can efficiently detect different types of EB/IS and applicable to large scale systems.
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