Variable predictive models—A new multivariate classification approach for pattern recognition applications

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摘要

Many pattern recognition algorithms applied in literature exhibit data specific performances and are also computationally intense and complex. The data classification problem poses further challenges when different classes cannot be distinguished just based on decision boundaries or conditional discriminating rules. As an alternate to existing methods, inter-relations among the feature vectors can be exploited for distinguishing samples into specific classes. Based on this idea, variable predictive model based class discrimination (VPMCD) method is proposed as a new and alternative classification approach. Analysis is carried out using seven well studied data sets and the performance of VPMCD is benchmarked against well established linear and non-linear classifiers like LDA, kNN, Bayesian networks, CART, ANN and SVM. It is demonstrated that VPMCD is an efficient supervised learning algorithm showing consistent and good performance over these data sets. The new VPMCD method has the potential to be effectively and successfully extended to many pattern recognition applications of recent interest.

论文关键词:Data classification,Variable predictive models,Discriminant analysis,Machine learning,Multivariate statistics

论文评审过程:Received 23 October 2006, Revised 23 April 2008, Accepted 14 July 2008, Available online 18 July 2008.

论文官网地址:https://doi.org/10.1016/j.patcog.2008.07.005