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− | |Title= | + | |Title=Clustering Event Traces by Behavioral Similarity |
|Year=2017 | |Year=2017 | ||
|Month=November | |Month=November | ||
− | |Booktitle= | + | |Booktitle=3rd International Workshop on Modeling for Ambient Assistance and Healthy Ageing |
|Publisher=Springer | |Publisher=Springer | ||
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Aktuelle Version vom 7. September 2017, 14:14 Uhr
Clustering Event Traces by Behavioral Similarity
Clustering Event Traces by Behavioral Similarity
Published: 2017
November
Buchtitel: 3rd International Workshop on Modeling for Ambient Assistance and Healthy Ageing
Verlag: Springer
Nicht-referierte Veröffentlichung
BibTeX
Kurzfassung
The automated analysis of event logs in smart homes could provide an IT-aided support for a highly autonomous, and age-appropriate life standard. The analysis of human behavior in the context of smart
homes is, however, a challenging task. Humans behave according to best practices and a single behavioral model is typically not sufficient to represent
them all. In fact, existing process mining algorithms reportedly generate spaghetti models from event logs of
exible processes, which are largely incomprehensible. Taking inspiration from this domain, we propose
in this paper a novel approach for clustering event traces by their behavioral similarity, rather than deriving a unique process model encompassing all traces. In order to do this two algorithms are introduced and we report the results of a preliminary evaluation demonstrating the
efficacy of the approach.
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