On-device modeling of user's social context and familiar places from smartphone-embedded sensor data
Mattia Giovanni Campana, Franca Delmastro

TL;DR
This paper introduces an on-device, unsupervised approach to model social and location context from smartphone sensors, enhancing privacy and personalization in mobile applications.
Contribution
It presents a novel lightweight method for on-device social and location context modeling using ego networks, improving situation recognition accuracy.
Findings
Achieved 3% AUROC improvement in situation recognition
Demonstrated effective semantic feature extraction from sensor data
Validated models on 5 real-world datasets
Abstract
Context modeling and recognition represent complex tasks that allow mobile and ubiquitous computing applications to adapt to the user's situation. Current solutions mainly focus on limited context information generally processed on centralized architectures, potentially exposing users' personal data to privacy leakage, and missing personalization features. For these reasons on-device context modeling and recognition represent the current research trend in this area. Among the different information characterizing the user's context in mobile environments, social interactions and visited locations remarkably contribute to the characterization of daily life scenarios. In this paper we propose a novel, unsupervised and lightweight approach to model the user's social context and her locations based on ego networks directly on the user mobile device. Relying on this model, the system is able…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Context-Aware Activity Recognition Systems · Opportunistic and Delay-Tolerant Networks
MethodsGreedy Policy Search
