Lifelong Self-Adaptation: Self-Adaptation Meets Lifelong Machine Learning

Omid Gheibi, Danny Weyns
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引用次数: 10

Abstract

In the past years, machine learning (ML) has become a popular approach to support self-adaptation. While ML techniques enable dealing with several problems in self-adaptation, such as scalable decision-making, they are also subject to inherent challenges. In this paper, we focus on one such challenge that is particularly important for self-adaptation: ML techniques are designed to deal with a set of predefined tasks associated with an operational domain; they have problems to deal with new emerging tasks, such as concept shift in input data that is used for learning. To tackle this challenge, we present lifelong self-adaptation: a novel approach to self-adaptation that enhances self-adaptive systems that use ML techniques with a lifelong ML layer. The lifelong ML layer tracks the running system and its environment, associates this knowledge with the current tasks, identifies new tasks based on differentiations, and updates the learning models of the self-adaptive system accordingly. We present a reusable architecture for lifelong self-adaptation and apply it to the case of concept drift caused by unforeseen changes of the input data of a learning model that is used for decision-making in self-adaptation. We validate lifelong self-adaptation for two types of concept drift using two cases.
终身自适应:自适应与终身机器学习相结合
在过去的几年里,机器学习(ML)已经成为一种流行的支持自适应的方法。虽然机器学习技术能够处理自适应中的几个问题,例如可扩展的决策,但它们也受到固有挑战的影响。在本文中,我们专注于一个对自适应特别重要的挑战:ML技术旨在处理与操作域相关的一组预定义任务;他们在处理新出现的任务时遇到问题,比如用于学习的输入数据中的概念转换。为了应对这一挑战,我们提出了终身自适应:一种新的自适应方法,它增强了使用终身ML层的ML技术的自适应系统。终身机器学习层跟踪运行的系统及其环境,将这些知识与当前任务关联起来,根据差异识别新任务,并相应地更新自适应系统的学习模型。我们提出了一个终身自适应的可重用架构,并将其应用于自适应决策中使用的学习模型的输入数据的不可预见变化引起的概念漂移的情况。我们用两个例子验证了两种类型的概念漂移的终身自适应。
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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