DocumentCode :
3678632
Title :
Belief flows for robust online learning
Author :
Pedro A. Ortega;Koby Crammer;Daniel D. Lee
Author_Institution :
School of Engineering and Applied Sciences, University of Pennsylvania, Philadelphia, 19104, USA
fYear :
2015
Firstpage :
70
Lastpage :
77
Abstract :
This paper introduces a new probabilistic model for online learning which dynamically incorporates information from stochastic gradients of an arbitrary loss function. Similar to probabilistic filtering, the model maintains a Gaussian belief over the optimal weight parameters. Unlike traditional Bayesian updates, the model incorporates a small number of gradient evaluations at locations chosen using Thompson sampling, making it computationally tractable. The belief is then transformed via a linear flow field which optimally updates the belief distribution using rules derived from information theoretic principles. Several versions of the algorithm are shown using different constraints on the flow field and compared with conventional online learning algorithms. Results are given for several classification tasks including logistic regression and multilayer neural networks.
Keywords :
"Bayes methods","Covariance matrices","Logistics","Training","Standards","Stochastic processes","Computational modeling"
Publisher :
ieee
Conference_Titel :
Information Theory and Applications Workshop (ITA), 2015
Type :
conf
DOI :
10.1109/ITA.2015.7308968
Filename :
7308968
Link To Document :
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