CLUSTER: An Unsupervised Algorithm for Modeling Gaussian Mixtures

نویسنده

  • Charles A. Bouman
چکیده

Charles A. Bouman School of Electrical Engineering Purdue University West Lafayette IN 47906 [email protected] (765) 494-0340 http://www.ece.purdue.edu/~bouman Version 2 April 1997 Version 3 September 1998 Version 3.2 December 1999; May 2000 manpage update Version 3.3 September 2000 manpage update Version 3.4 October 2001 manpage update Version 3.6.4 July 2005 manpage update

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تاریخ انتشار 1997