2022
DOI: 10.48550/arxiv.2201.05040
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Multi-task longitudinal forecasting with missing values on Alzheimer's Disease

Abstract: Machine learning techniques typically applied to dementia forecasting lack in their capabilities to jointly learn several tasks, handle time dependent heterogeneous data and missing values. In this paper, we propose a framework using the recently presented SSHIBA model for jointly learning different tasks on longitudinal data with missing values. The method uses Bayesian variational inference to impute missing values and combine information of several views. This way, we can combine different data-views from †… Show more

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References 41 publications
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