We propose a discriminant analysis (DA) classifier that uses
online active learning to address the need for the frequent
training of myoelectric interfaces due to covariate shift. This
online classifier is initially trained using a small set of examples,
and then updated over time using streaming data that are
interactively labeled by a user or pseudo-labeled by a softlabeling
technique. We prove, theoretically, that this yields
the same model as training a DA classifier via full batch learning.
We then provide experimental evidence that our approach
improves the performance of DA classifiers and is robust to
mislabeled data, and that our soft-labeling technique has better
performance than existing state-of-the-art methods.We argue
that our proposal is suitable for real-time applications, as
its time complexity w.r.t. the streaming data remains constant.
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6996
End page
7004
Total pages
9
Outlet
Proceedings of the AAAI Conference on Artificial Intelligence