Regularized principal manifolds
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Smola, Alexander
Mika, Sebastian
Schoelkopf, Bernhard
Williamson, Robert
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MIT Press
Abstract
Many settings of unsupervised learning can be viewed as quantization problems - the minimization
of the expected quantization error subject to some restrictions. This allows the
use of tools such as regularization from the theory of (supervised) risk minimization for
unsupervised learning. This setting turns out to be closely related to principal curves, the
generative topographic map, and robust coding.
We explore this connection in two ways: (1) we propose an algorithm for nding principal
manifolds that can be regularized in a variety of ways; and (2) we derive uniform
convergence bounds and hence bounds on the learning rates of the algorithm. In particular,
we give bounds on the covering numbers which allows us to obtain nearly optimal
learning rates for certain types of regularization operators. Experimental results demonstrate
the feasibility of the approach.
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Journal of Machine Learning Research 1.3 (2001): 179-209
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Journal of Machine Learning Research
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