GTM: The Generative Topographic Mapping

Chris Bishop(Aston University), Markus Svensén(Aston University), Christopher K. I. Williams(Aston University)
Neural Computation
January 1, 1998
Cited by 1,388

Abstract

Latent variable models represent the probability density of data in a space of several dimensions in terms of a smaller number of latent, or hidden, variables. A familiar example is factor analysis, which is based on a linear transformation between the latent space and the data space. In this article, we introduce a form of nonlinear latent variable model called the generative topographic mapping, for which the parameters of the model can be determined using the expectation-maximization algorithm. GTM provides a principled alternative to the widely used self-organizing map (SOM) of Kohonen (1982) and overcomes most of the significant limitations of the SOM. We demonstrate the performance of the GTM algorithm on a toy problem and on simulated data from flow diagnostics for a multiphase oil pipeline.


Related Papers

No related papers found

Powered by citation graph analysis