Fitting mixture models to grouped and truncated data via the EM algorithm.

Abstract:

:The fitting of finite mixture models via the EM algorithm is considered for data which are available only in grouped form and which may also be truncated. A practical example is presented where a mixture of two doubly truncated log-normal distributions is adopted to model the distribution of the volume of red blood cells in cows during recovery from anemia.

journal_name

Biometrics

journal_title

Biometrics

authors

McLachlan GJ,Jones PN

subject

Has Abstract

pub_date

1988-06-01 00:00:00

pages

571-8

issue

2

eissn

0006-341X

issn

1541-0420

journal_volume

44

pub_type

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