Sparse Ensemble Machine Learning to Improve Robustness of Long-Term Decoding in iBMIs

Volume: 28, Issue: 2, Pages: 380 - 389
Published: Feb 1, 2020
Abstract
This paper presents a novel sparse ensemble based machine learning approach to enhance robustness of intracortical Brain Machine Interfaces (iBMIs) in the face of non-stationary distribution of input neural data across time. Each classifier in the ensemble is trained on a randomly sampled (with replacement) set of input channels. These sparse connections ensure that with a high chance, few of the base classifiers should be less affected by the...
Paper Details
Title
Sparse Ensemble Machine Learning to Improve Robustness of Long-Term Decoding in iBMIs
Published Date
Feb 1, 2020
Volume
28
Issue
2
Pages
380 - 389
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