CYHCJul 4, 2018

Context Data Categories and Privacy Model for Mobile Data Collection Apps

arXiv:1807.01515v143 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for less intrusive personality assessment in context-aware applications like mobile health and recommender systems, but it is incremental as it builds on existing tracking methods with expanded data categories and privacy measures.

The authors tackled the problem of predicting user personality from smartphone data without tedious questionnaires, by developing the TYDR app that tracks a larger variety of smartphone data than existing apps and introducing a context data model and privacy model for mobile data collection.

Context-aware applications stemming from diverse fields like mobile health, recommender systems, and mobile commerce potentially benefit from knowing aspects of the user's personality. As filling out personality questionnaires is tedious, we propose the prediction of the user's personality from smartphone sensor and usage data. In order to collect data for researching the relationship between smartphone data and personality, we developed the Android app TYDR (Track Your Daily Routine) which tracks smartphone data and utilizes psychometric personality questionnaires. With TYDR, we track a larger variety of smartphone data than similar existing apps, including metadata on notifications, photos taken, and music played back by the user. For the development of TYDR, we introduce a general context data model consisting of four categories that focus on the user's different types of interactions with the smartphone: physical conditions and activity, device status and usage, core functions usage, and app usage. On top of this, we develop the privacy model PM-MoDaC specifically for apps related to the collection of mobile data, consisting of nine proposed privacy measures. We present the implementation of all of those measures in TYDR. Although the utilization of the user's personality based on the usage of his or her smartphone is a challenging endeavor, it seems to be a promising approach for various types of context-aware mobile applications.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes