학술논문

Parametric Transfer Learning Based on the Fisher Divergence for Well-Being Prediction
Document Type
Conference
Source
2019 IEEE 19th International Conference on Bioinformatics and Bioengineering (BIBE) Bioinformatics and Bioengineering (BIBE), 2019 IEEE 19th International Conference on. :288-295 Oct, 2019
Subject
Bioengineering
Communication, Networking and Broadcast Technologies
Computing and Processing
Signal Processing and Analysis
Predictive models
Data models
Training
Depression
Wearable sensors
Monte Carlo methods
Bayes methods
Transfer Learning, MCMC, Bayesian inference, Well being prediction, personalised modelling
Language
ISSN
2471-7819
Abstract
Smartphones and wearable sensors are increasingly used for personalised prediction and management in healthcare contexts. Personalisation requires tuning/learning a model of the user. However, traditional machine learning approaches for personalised modelling typically require the availability of sufficient personal data of a suitable nature for training, which can be a challenge in such contexts. We propose a parametric transfer learning approach based on the Fisher divergence to address this challenge. This makes it possible to create patient-specific models and make predictions of self-reported well-being scores, when training is performed incrementally on sparse data becoming slowly available over time. This approach allows us to make informed predictions even in the early stages of data collection, by leveraging external information coming from other patients, in the form of a prior used within a Markov-Chain Monte Carlo process. Our approach performs favourably against competing models and standard baselines, particularly when long-term forecasts are required but training data cover only a short period.