Title :
First-order tree-type dependence between variables and classification performance
Author :
Raudys, Sarunas ; Saudargiene, Ausra
Author_Institution :
Inst. of Math. & Inf., Acad. of Sci., Vilnius, Lithuania
fDate :
2/1/2001 12:00:00 AM
Abstract :
Structuralization of the covariance matrix reduces the number of parameters to be estimated from the training data and does not affect an increase in the generalization error asymptotically as both the number of dimensions and training sample size grow. A method to benefit from approximately correct assumptions about the first order tree dependence between components of the feature vector is proposed. We use a structured estimate of the covariance matrix to decorrelate and scale the data and to train a single-layer perceptron in the transformed feature space. We show that training the perceptron can reduce negative effects of inexact a priori information. Experiments performed with 13 artificial and 10 real world data sets show that the first-order tree-type dependence model is the most preferable one out of two dozen of the covariance matrix structures investigated
Keywords :
covariance matrices; decorrelation; learning (artificial intelligence); parameter estimation; pattern classification; perceptrons; trees (mathematics); uncertain systems; classification performance; covariance matrix; covariance matrix structure; data decorrelation; data scaling; feature vector; first-order tree-type dependence; first-order tree-type dependence model; generalization error; parameter estimation; single-layer perceptron training; structured estimate; Cardiac arrest; Classification tree analysis; Covariance matrix; Decorrelation; Parameter estimation; Pattern recognition; Predictive models; Probability density function; Probability distribution; Training data;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on