Learning to Learn in Collective Adaptive Systems: Mining Design Patterns for Data-driven Reasoning
August 10, 2020 Β· Declared Dead Β· π 2020 IEEE International Conference on Autonomic Computing and Self-Organizing Systems Companion (ACSOS-C)
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Authors
Mirko D'Angelo, Sona Ghahremani, Simos Gerasimou, Johannes Grohmann, Ingrid Nunes, Sven Tomforde, Evangelos Pournaras
arXiv ID
2008.03995
Category
cs.SE: Software Engineering
Citations
4
Venue
2020 IEEE International Conference on Autonomic Computing and Self-Organizing Systems Companion (ACSOS-C)
Last Checked
4 months ago
Abstract
Engineering collective adaptive systems (CAS) with learning capabilities is a challenging task due to their multi-dimensional and complex design space. Data-driven approaches for CAS design could introduce new insights enabling system engineers to manage the CAS complexity more cost-effectively at the design-phase. This paper introduces a systematic approach to reason about design choices and patterns of learning-based CAS. Using data from a systematic literature review, reasoning is performed with a novel application of data-driven methodologies such as clustering, multiple correspondence analysis and decision trees. The reasoning based on past experience as well as supporting novel and innovative design choices are demonstrated.
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