Privacy-Preserving Personalized Fitness Recommender System (P3FitRec): A Multi-level Deep Learning Approach
Xiao Liu, Bonan Gao, Basem Suleiman, Han You, Zisu Ma, Yu Liu, and Ali, Anaissi

TL;DR
This paper presents a multi-level deep learning framework for a privacy-preserving personalized fitness recommender system that uses sensory data from wearable devices to provide tailored exercise recommendations without collecting sensitive user information.
Contribution
It introduces a novel deep learning approach that infers user fitness characteristics from sensor data, avoiding the need for explicit personal or biometric data, thus enhancing privacy.
Findings
High accuracy in predicting exercise distance, speed, and heart rate sequences.
Effective personalization without collecting sensitive user information.
Demonstrated on real Fitbit dataset with superior results.
Abstract
Recommender systems have been successfully used in many domains with the help of machine learning algorithms. However, such applications tend to use multi-dimensional user data, which has raised widespread concerns about the breach of users privacy. Meanwhile, wearable technologies have enabled users to collect fitness-related data through embedded sensors to monitor their conditions or achieve personalized fitness goals. In this paper, we propose a novel privacy-aware personalized fitness recommender system. We introduce a multi-level deep learning framework that learns important features from a large-scale real fitness dataset that is collected from wearable IoT devices to derive intelligent fitness recommendations. Unlike most existing approaches, our approach achieves personalization by inferring the fitness characteristics of users from sensory data and thus minimizing the need for…
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Taxonomy
TopicsMobile Health and mHealth Applications · Physical Activity and Health
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
