Evaluating Timeliness and Accuracy Trade-offs of Supervised Machine Learning for Adapting Enterprise DRE Systems in Dynamic Environments

Several adaptation approaches have been devised to ensure end-to-end quality-of-service (QoS) for enterprise distributed systems in dynamic operating environments. Not all approaches are applicable, however, for the stringent accuracy, timeliness, and development complexity requirements of distribut...

全面介绍

书目详细资料
Main Authors: Joe Hoffert, Douglas C. Schmidt, Aniruddha Gokhale
格式: 文件
语言:English
出版: Springer 2011-10-01
丛编:International Journal of Computational Intelligence Systems
在线阅读:https://www.atlantis-press.com/article/2364.pdf
实物特征
总结:Several adaptation approaches have been devised to ensure end-to-end quality-of-service (QoS) for enterprise distributed systems in dynamic operating environments. Not all approaches are applicable, however, for the stringent accuracy, timeliness, and development complexity requirements of distributed real-time and embedded (DRE) systems. This paper empirically evaluates constant-time supervised machine learning techniques, such as artificial neural networks (ANNs) and support vector machines (SVMs), and presents a composite metric to support quantitative evaluation of accuracy and timeliness for these adaptation approaches.
ISSN:1875-6883