Categories
Autoclass
AutoClass solves the problem of automatic discovery of classes in data (sometimes called clustering or unsupervised learning), as distinct from the generation of class descriptions from labeled examples (called supervised learning). It aims to discover the 'natural' classes in the data.
AutoClass is applicable to observations of things that can be described by a set of attributes, without referring to other things. The data values corresponding to each attribute are limited to be either numbers or the elements of a fixed set of symbols. With numeric data, a measurement error must be provided.
Last updated 28 Mar, 2003
Versions
3.3.4
3.3.4 stable released 2002-01-24
- Released: 24 Jan, 2002
- Code Maturity: Stable
- Source Archive: http://ic-www.arc.nasa.gov/ic/projects/bayes-gr...
- Licenses: PublicDomain
- Interfaces: Command Line
User Community and Support
User intro included; user reference manual included



