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wolffd@0: Netlab Reference Manual demgmm4
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wolffd@0:
wolffd@0: demgmm4
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wolffd@0:
wolffd@0: Purpose
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wolffd@0: Demonstrate density modelling with a Gaussian mixture model.
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wolffd@0: Synopsis
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wolffd@0:
wolffd@0: demgmm4
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wolffd@0: Description
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wolffd@0: The problem consists of modelling data generated
wolffd@0: by a mixture of three Gaussians in 2 dimensions with a mixture model
wolffd@0: using full covariance matrices. The priors are 0.3, 0.5 and 0.2; the
wolffd@0: centres are (2, 3.5), (0, 0) and (0,2); the variances are (0.16, 0.64)
wolffd@0: axis aligned, (0.25, 1) rotated by 30 degrees and the identity
wolffd@0: matrix. The first figure contains a scatter plot of the data.
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wolffd@0: A Gaussian mixture model with three components is trained using EM. The
wolffd@0: parameter vector is printed before training and after training. The user
wolffd@0: should press any key to continue at these points. The parameter vector
wolffd@0: consists of priors (the column), and centres (given as (x, y) pairs as
wolffd@0: the next two columns). The covariance matrices are printed separately.
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The second figure is a 3 dimensional view of the density function,
wolffd@0: while the third shows the axes of the 1-standard deviation ellipses
wolffd@0: for the three components of the mixture model.
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wolffd@0: See Also
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wolffd@0: gmm
, gmminit
, gmmem
, gmmprob
, gmmunpak
wolffd@0: Pages:
wolffd@0: Index
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wolffd@0: Copyright (c) Ian T Nabney (1996-9)
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