Engineering performance using control theory
Joseph L. Hellerstein, Yixin Diao, et al.
CMG 2007
Exploring large data sets typically involves activities that iterate between data selection and data analysis, in which insights obtained from analysis result in new data selection. Further, data analysis needs to use a combination of analysis techniques: data summarization, mining algorithms and visualization. This interweaving of functions arises both from the semantics of what the analyst hopes to achieve and from scalability requirements for dealing with large data volumes. We refer to such a process as a progressive analysis. Herein is described a tool, Event Miner, that integrates data selection, mining and visualization for progressive analysis of temporal, categorical data. We discuss a data model and architecture. We illustrate how our tool can be used for complex mining tasks such as finding patterns not occurring on Monday. Further, we discuss the novel visualization employed, such as visualizing categorical data and the results of data mining. Also, we discuss the extension of the existing mining framework needed to mine temporal events with multiple attributes. Throughout, we illustrate the capabilities of Event Miner by applying it to event data from large computer networks. © 2002 IEEE.
Joseph L. Hellerstein, Yixin Diao, et al.
CMG 2007
Wei Peng, Tao Li, et al.
ICAC 2005
Joseph L. Hellerstein, Kaan Katircioglu, et al.
IEEE Journal on Selected Areas in Communications
Mark Brodie, Sheng Ma, et al.
J Network Syst Manage