Article ID: | iaor20164326 |
Volume: | 8 |
Issue: | 1 |
Start Page Number: | 59 |
End Page Number: | 70 |
Publication Date: | Mar 2016 |
Journal: | Service Science |
Authors: | Nohadani Omid, Dunn Jocelyn, Klimeck Gerhard |
Keywords: | marketing, computers: information, service, behaviour, datamining, education |
Many services, e.g., in education and research, have witnessed increased productivity and scalability, mainly because of the growing prevalence of online platforms. To accelerate this progression, a detailed understanding of user interactions with these complex systems is instrumental. Current approaches for analyzing service user behavior have two main limitations: (a) unsupervised learning methods do not discriminate behavior meaningfully and scale poorly; and (b) surveys as input data probe only intentions. We introduce a framework to analyze user behavior in complex cloud services. Our objectives are (a) a computationally lean method to cope with large data sets and (b) for the input data to be free of assumptions. We define three data‐driven metrics based only on the size and volume of data, using nested arrangements of zero and infinity norms. Using threshold analysis, user behavior data is categorized over one metric and subsequently verified over the other two metrics. We apply this method to analyze the behavior of users of nanoHUB services, the world’s largest cyber‐infrastructure for nanotechnology research and education. As input, actual user decisions are employed. The introduced