Ensembling Neural Networks for Improved Prediction and Privacy in Early Diagnosis of Sepsis

09/01/2022
by   Shigehiko Schamoni, et al.
0

Ensembling neural networks is a long-standing technique for improving the generalization error of neural networks by combining networks with orthogonal properties via a committee decision. We show that this technique is an ideal fit for machine learning on medical data: First, ensembles are amenable to parallel and asynchronous learning, thus enabling efficient training of patient-specific component neural networks. Second, building on the idea of minimizing generalization error by selecting uncorrelated patient-specific networks, we show that one can build an ensemble of a few selected patient-specific models that outperforms a single model trained on much larger pooled datasets. Third, the non-iterative ensemble combination step is an optimal low-dimensional entry point to apply output perturbation to guarantee the privacy of the patient-specific networks. We exemplify our framework of differentially private ensembles on the task of early prediction of sepsis, using real-life intensive care unit data labeled by clinical experts.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/04/2019

Differentially Private Survival Function Estimation

Survival function estimation is used in many disciplines, but it is most...
research
05/07/2019

Interpretable Outcome Prediction with Sparse Bayesian Neural Networks in Intensive Care

Clinical decision making is challenging because of pathological complexi...
research
02/18/2019

Differentially Private Continual Learning

Catastrophic forgetting can be a significant problem for institutions th...
research
04/16/2019

Machine learning for early prediction of circulatory failure in the intensive care unit

Intensive care clinicians are presented with large quantities of patient...
research
06/20/2020

Collective Learning by Ensembles of Altruistic Diversifying Neural Networks

Combining the predictions of collections of neural networks often outper...
research
01/18/2022

A Deep Neural Networks ensemble workflow from hyperparameter search to inference leveraging GPU clusters

Automated Machine Learning with ensembling (or AutoML with ensembling) s...

Please sign up or login with your details

Forgot password? Click here to reset