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Privacy preserving pregnancy weight gain management
Author(s) -
Chetanya Puri,
Koustabh Dolui,
Gerben Kooijman,
Felipe Masculo,
Shan Van Sambeek,
Sebastiaan Den Boer,
Sam Michiels,
Hans Hallez,
Stijn Luca,
Bart Vanrumste
Publication year - 2019
Publication title -
lirias (ku leuven)
Language(s) - English
Resource type - Conference proceedings
ISBN - 978-1-4503-6950-3
DOI - 10.1145/3356250.3361941
Subject(s) - computer science , weight gain , data modeling , information privacy , compromise , software , machine learning , artificial intelligence , database , body weight , computer security , operating system , medicine , social science , sociology
Early gestational weight gain prediction can help expecting women overcome several associated risks. However, training the model requires access to centrally stored privacy sensitive weight and other meta-data. In this demo, we present a privacy preserving federated learning approach where we train a global weight gain prediction model by aggregating client models trained locally on their personal data. We showcase a software data-exploration tool that exhibits local model generation, sharing and updating across users and server for proposed collaborative learning. Our proposed model predicts the final weight category with 61.3% accuracy on day 140, with a 8.8% compromise on the centralized training accuracy.

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