Visualisation of heterogeneous data with simultaneous feature saliency using Generalised Generative Topographic Mapping


Autoria(s): Mumtaz, Shahzad; Randrianandrasana, Michel F.; Bassi, Gurjinder; Nabney, Ian T.
Contribuinte(s)

Hammer, Barbara

Martinetz, Thomas

Villmann, Thomas

Data(s)

01/10/2015

Resumo

Most machine-learning algorithms are designed for datasets with features of a single type whereas very little attention has been given to datasets with mixed-type features. We recently proposed a model to handle mixed types with a probabilistic latent variable formalism. This proposed model describes the data by type-specific distributions that are conditionally independent given the latent space and is called generalised generative topographic mapping (GGTM). It has often been observed that visualisations of high-dimensional datasets can be poor in the presence of noisy features. In this paper we therefore propose to extend the GGTM to estimate feature saliency values (GGTMFS) as an integrated part of the parameter learning process with an expectation-maximisation (EM) algorithm. The efficacy of the proposed GGTMFS model is demonstrated both for synthetic and real datasets.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/26924/1/GGTMFS_Missing_NC2_LNCS.pdf

Mumtaz, Shahzad; Randrianandrasana, Michel F.; Bassi, Gurjinder and Nabney, Ian T. (2015). Visualisation of heterogeneous data with simultaneous feature saliency using Generalised Generative Topographic Mapping. IN: Workshop new challenges in neural computation 2015. Hammer, Barbara; Martinetz, Thomas and Villmann, Thomas (eds) Machine learning reports . Bielefeld (DE): Universität Bielefeld.

Publicador

Universität Bielefeld

Relação

http://eprints.aston.ac.uk/26924/

Tipo

Book Section

NonPeerReviewed