Unsupervised Learning
Unsupervised learning
is a method of
machine learning
where a model is fit to observations. It is distinguished from
supervised learning
by the fact that there is no
a priori
output. In unsupervised learning, a data set of input objects is gathered. Unsupervised learning then typically treats input objects as a set of
random variables
. A joint
density model
is then built for the data set. Unsupervised learning can be used in conjunction with
Bayesian inference
to produce conditional probabilities (i.e. supervised learning) for any of the random variables given the others. Unsupervised learning is also useful for
data compression
: fundamentally, all data compression algorithms either explicitly or implicitly rely on a
probability distribution
over a set of inputs. Another form of unsupervised learning is
clustering
, which is sometimes not
probabilistic
. Also see
formal concept analysis
.
Bibliography
Geoffrey Hinton
,
Terrence J. Sejnowski
(editors) (1999) Unsupervised Learning and Map Formation: Foundations of Neural Computation, MIT Press, ISBN 026258168X (This book focuses on unsupervised learning in
neural networks
.)
See also
Data clustering
,
Self-organizing map
,
Expectation-maximization algorithm
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