| Literature DB >> 26800334 |
Michael Biehl1, Barbara Hammer2, Thomas Villmann3.
Abstract
An overview is given of prototype-based models in machine learning. In this framework, observations, i.e., data, are stored in terms of typical representatives. Together with a suitable measure of similarity, the systems can be employed in the context of unsupervised and supervised analysis of potentially high-dimensional, complex datasets. We discuss basic schemes of competitive vector quantization as well as the so-called neural gas approach and Kohonen's topology-preserving self-organizing map. Supervised learning in prototype systems is exemplified in terms of learning vector quantization. Most frequently, the familiar Euclidean distance serves as a dissimilarity measure. We present extensions of the framework to nonstandard measures and give an introduction to the use of adaptive distances in relevance learning.Mesh:
Year: 2016 PMID: 26800334 DOI: 10.1002/wcs.1378
Source DB: PubMed Journal: Wiley Interdiscip Rev Cogn Sci ISSN: 1939-5078