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Performance comparison of multi-label learning algorithms on clinical data for chronic diseases
2015
Computers in Biology and Medicine
We are motivated by the issue of classifying diseases of chronically ill patients to assist physicians in their everyday work. Our goal is to provide a performance comparison of state-of-the-art multi-label learning algorithms for the analysis of multivariate sequential clinical data from medical records of patients affected by chronic diseases. As a matter of fact, the multi-label learning approach appears to be a good candidate for modeling overlapped medical conditions, specific to
doi:10.1016/j.compbiomed.2015.07.017
pmid:26275389
fatcat:ceyoalynizeifpds5yiyic3jwu