Title :
Objective functions for maximum likelihood classifier design
Author :
Goodman, Graham L. ; McMichael, Daniel W.
Author_Institution :
Div. of Land Oper., Defence Sci. & Technol. Organ., Salisbury, SA, Australia
Abstract :
This paper reports research into maximum likelihood parameter estimation for classification of data modelled as mixtures of multivariate Gaussian distributions. Two likelihood metrics are compared: the log conditional probability of the feature data (the non-discriminative log likelihood, Ln), and the log conditional probability of the class labels (the discriminative log likelihood, Ld). Results on some simple data sets indicate that Ld yields poorer classification accuracy, as measured by the average log probability l¯c of obtaining the correct classification of a set of labelled test data. Analysis of the score equations and the information matrices derived from Ld and L n reveals that Ld produces estimates of class means with larger bias and variance, and hence larger mean-square error (E¯2), than those from Ln. Some experimental results on simple data sets are given as illustration
Keywords :
Gaussian distribution; inference mechanisms; maximum likelihood estimation; pattern classification; Gaussian distribution; data classification; discriminative log likelihood; feature data; log conditional probability; maximum likelihood estimation; mean-square error; nondiscriminative log likelihood; parameter estimation; reasoning; Analysis of variance; Data analysis; Equations; Gaussian distribution; Information processing; Integrated circuit testing; Maximum likelihood estimation; Parameter estimation; Performance analysis; Signal processing;
Conference_Titel :
Information, Decision and Control, 1999. IDC 99. Proceedings. 1999
Conference_Location :
Adelaide, SA
Print_ISBN :
0-7803-5256-4
DOI :
10.1109/IDC.1999.754220