Accelerated training of bootstrap aggregation-based deep information extraction systems from cancer pathology reports

Volume: 110, Pages: 103564 - 103564
Published: Oct 1, 2020
Abstract
In machine learning, it is evident that the classification of the task performance increases if bootstrap aggregation (bagging) is applied. However, the bagging of deep neural networks takes tremendous amounts of computational resources and training time. The research question that we aimed to answer in this research is whether we could achieve higher task performance scores and accelerate the training by dividing a problem into sub-problems.The...
Paper Details
Title
Accelerated training of bootstrap aggregation-based deep information extraction systems from cancer pathology reports
Published Date
Oct 1, 2020
Volume
110
Pages
103564 - 103564
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