基于CBR的自愈系统决策优化

Saadia Nasir, Maria Taimoor, Hina Gul, Amina Ali, M. Khan
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引用次数: 1

摘要

自主系统是能够自我管理的软件系统。这些系统经历了一个学习过程来实现这种能力。基于案例的推理(Case-based reasoning, CBR)是自主管理者的学习范式之一。自主管理器定期监测被监测系统的脉冲,并分析系统的捕获状态。在出现问题状态的情况下,自主管理人员使用基于CBR的决策支持系统来纠正问题。这类系统的关键问题之一是从故障中恢复。识别影响CBR系统性能的因素是构建成功、准确的决策支持系统的关键。为此,提出了一种基于混合CBR的基于属性选择方法的自愈系统。本文采用不同的相似性度量、解适应方法和属性选择技术进行了实证研究。为了解决CBR在自愈系统中的性能问题,我们在一个名为RUIBiS的自愈系统模拟器上进行了实验,使用不同的机器学习技术来确定这些相似距离的权重的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Decision Making in CBR Based Self-Healing Systems
Autonomic systems are the software systems capable to manage themselves. These systems undergo a learning process to achieve this capability. Case-based reasoning (CBR) is one of the promising learning paradigms for autonomic managers. Autonomic managers monitor the pulse of the monitored system on periodic basis and analyze the captured state of the system. In case of a problematic state, autonomic managers use their CBR based decision support system to rectify the problem. One of the critical problems in such systems is recovery from failures. The problem of identifying the factors affecting the performance of CBR system is a key element to build successful and accurate decision support systems. For this purpose, a hybrid CBR based self-healing system supported by attribute selection methods has been proposed. An empirical investigation has been conducted in this paper using different similarity measures, solution adaptation methods and attribute selection techniques. To address the performance problem of CBR in self-healing systems, we have conducted experiments on an emulator of self-healing systems called RUIBiS using different machine learning techniques to determine the significance of weights for these similarity distances.
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