Privacy in Sensor-Driven Human Data Collection: A Guide for Practitioners
Arkadiusz Stopczynski, Riccardo Pietri, Alex Pentland, David Lazer,, Sune Lehmann

TL;DR
This paper surveys privacy challenges and solutions in sensor-driven human data collection, emphasizing the importance of ethical practices and offering guidance for researchers and practitioners to protect individual privacy.
Contribution
It provides a comprehensive overview of privacy issues in human sensor data collection and offers recommendations for ethical and secure data handling practices.
Findings
Many studies lack explicit informed consent procedures
Privacy protections are often insufficient in data sharing protocols
Recommendations include improved consent and data security measures
Abstract
In recent years, the amount of information collected about human beings has increased dramatically. This development has been partially driven by individuals posting and storing data about themselves and friends using online social networks or collecting their data for self-tracking purposes (quantified-self movement). Across the sciences, researchers conduct studies collecting data with an unprecedented resolution and scale. Using computational power combined with mathematical models, such rich datasets can be mined to infer underlying patterns, thereby providing insights into human nature. Much of the data collected is sensitive. It is private in the sense that most individuals would feel uncomfortable sharing their collected personal data publicly. For this reason, the need for solutions to ensure the privacy of the individuals generating data has grown alongside the data collection…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Privacy, Security, and Data Protection · Mobile Crowdsensing and Crowdsourcing
