Mining Behavioral Groups in Large Wireless LANs
Wei-jen Hsu, Debojyoti Dutta, and Ahmed Helmy

TL;DR
This paper analyzes wireless user behavior in large university networks using extensive logs, revealing diverse, repetitive, and multi-modal patterns that can inform future network management and behavior-aware protocols.
Contribution
It introduces a systematic TRACE approach combining clustering and matrix decomposition to characterize and differentiate user behavioral patterns in wireless LANs.
Findings
Over 60% of users exhibit multi-modal behavior.
Hundreds of distinct behavioral groups identified.
Major group sizes follow a power-law distribution.
Abstract
One vision of future wireless networks is that they will be deeply integrated and embedded in our lives and will involve the use of personalized mobile devices. User behavior in such networks is bound to affect the network performance. It is imperative to study and characterize the fundamental structure of wireless user behavior in order to model, manage, leverage and design efficient mobile networks. It is also important to make such study as realistic as possible, based on extensive measurements collected from existing deployed wireless networks. In this study, using our systematic TRACE approach, we analyze wireless users' behavioral patterns by extensively mining wireless network logs from two major university campuses. We represent the data using location preference vectors, and utilize unsupervised learning (clustering) to classify trends in user behavior using novel similarity…
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Taxonomy
TopicsMobile Ad Hoc Networks · Opportunistic and Delay-Tolerant Networks · Human Mobility and Location-Based Analysis
