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A Concept for Proactive Knowledge Construction in Self-Learning Autonomous Systems

机译:自学自主系统中主动知识构建的概念

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The research initiative of self-improving and self-integrating systems (SISSY) emerged as response to the dramatically increasing complexity in information and communication technology. Such systems' ability of autonomous online learning has been identified as a key enabler for SISSY as well as for the broader field of self-adaptive and self-organizing (SASO) systems, since it provides the technical basis for dealing with the inherent dynamics of non-stationary environments that continually challenge these systems with unforeseen situations, disturbances, and changing goals. However, the learning progress is guided by the experiences in terms of situations the system has been exposed to so far - this reactive learning strategy naturally results in missing or inappropriate knowledge. In this paper, we define a formal system model and formulate an abstract learning task for SISSY systems. We further introduce the notion of knowledge and knowledge gaps to subsequently present a novel concept to automatically assess a system's existing knowledge base and, consequently, to proactively acquire knowledge to prepare SISSY/SASO systems for coping with disturbances and other changes that occur at runtime. By the proposed a priori construction of knowledge, we pursue the overall goal to increase the robustness as well as the learning efficiency of self-learning autonomous systems. Endowing these systems with the ability of identifying regions in their knowledge base that are not appropriately covered, strengthens their self-awareness property.
机译:自改进和自集成系统(SISSY)的研究举措是对信息和通信技术日趋复杂的回应。此类系统的自主在线学习能力已被认为是SISSY以及更广泛的自适应和自组织(SASO)系统领域的关键推动力,因为它为处理ISIS的固有动态特性提供了技术基础。非平稳环境,这些环境以不可预见的情况,干扰和不断变化的目标不断挑战这些系统。但是,到目前为止,学习进度是根据经验来指导的,因为系统迄今为止一直处于这种情况下-这种被动的学习策略自然会导致知识缺失或不适当。在本文中,我们定义了一个正式的系统模型,并为SISSY系统制定了抽象的学习任务。我们进一步介绍了知识和知识鸿沟的概念,随后提出了一个新颖的概念来自动评估系统的现有知识库,并因此主动获取知识以准备SISSY / SASO系统,以应对运行时发生的干扰和其他变化。通过提出的先验知识构建,我们追求了提高自学习自主系统的鲁棒性和学习效率的总体目标。使这些系统具有识别知识库中未被适当覆盖的区域的能力,从而增强了它们的自我意识。

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