走向具有解释能力的历史自觉自适应

A. García-Domínguez, N. Bencomo, Juan Marcelo Parra Ullauri, L. H. Paucar
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引用次数: 10

摘要

自适应系统(SAS)越来越多地使用基于人工智能的学习和进化编程等技术。在本文中,我们认为SAS需要一个基础设施和能力来查看它自己的历史,以解释和解释为什么系统达到了当前状态并表现出当前行为。实现这一点绝非易事:存储过去的系统历史、查询它并在给定决策算法的上下文中应用信息的可行性方面存在不同的挑战。我们介绍了反思、自我意识和自适应系统应该暴露的4个级别的能力,这将指导我们未来对该主题的长期研究。我们使用基于时间图的模型来演示前两个级别的结果。具体来说,我们将解释第一级如何涵盖执行结果的取证分析。接下来是基于第二层提供的功能,描述在自适应系统运行时启用历史分析的结果。还提出了所需的系统架构,以及实时分析可能带来的开销。本文还讨论了这些层次所提供的研究机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards History-Aware Self-Adaptation with Explanation Capabilities
Self-adaptive systems (SAS) increasingly use techniques such as AI-based learning and evolutionary programming. In this paper, we argue that a SAS needs an infrastructure and capabilities to look at its own history to explain and reason why the system has reached its current state and exhibits its current behaviour. Achieving this is no simple feat: there are different challenges with respect to the feasibility of storing past system history, querying it and applying the information in the context of a given decision-making algorithm. We introduce 4 levels of capabilities that should be exposed by reflective, self aware and self-adaptive systems, and which will guide our future research on the topic in the longer term. We demonstrate our results for the first two levels using temporal graph-based models. Specifically, we explain how the first level covers forensic analysis of the execution results. This is followed by the description of our results in enabling historical analyses while the self-adaptive system is running, based on the capabilities provided by the second level. Required system architectures are also proposed, as well as the overheads that would be imposed by live analysis. Research opportunities provided by the set of levels are also discussed.
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