Adaptive incremental principal component analysis in nonstationary online learning environments

In this paper, we propose a new Chunk IPCA algorithm in which an optimal threshold of accumulation ratio is adaptively selected such that the classification accuracy is maximized for a validation data set. In order to obtain a proper set of validation data, an online clustering method called Evolving Clustering Method (ECM) is introduced into Chunk IPCA. In the proposed Chunk IPCA called CIPCA-ECM, training data are first separated into the subsets of every class; then, ECM is applied to each subset to update the validation data set. In the experiments, the evaluation of the proposed Chunk IPCA algorithm is carried out using the four UCI data sets and the effectiveness of updating the threshold is discussed. The results suggest that the incremental learning of an eigenspace in the proposed CIPCA-ECM is stably carried out, and a compact and effective eigenspace is obtained over the entire learning stages. The recognition accuracy of CIPCA-ECM is almost equal to the best performance of CIPCA-FIX in which an optimal threshold is manually predetermined.

[1]  Nikola Kasabov,et al.  Evolving Connectionist Systems: Methods and Applications in Bioinformatics, Brain Study and Intelligent Machines , 2002, IEEE Transactions on Neural Networks.

[2]  Nikola K. Kasabov,et al.  DENFIS: dynamic evolving neural-fuzzy inference system and its application for time-series prediction , 2002, IEEE Trans. Fuzzy Syst..

[3]  Shaoning Pang,et al.  Incremental linear discriminant analysis for classification of data streams , 2005, IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics).

[4]  B. E. Eckbo,et al.  Appendix , 1826, Epilepsy Research.

[5]  Vwani P. Roychowdhury,et al.  Algorithms for accelerated convergence of adaptive PCA , 2000, IEEE Trans. Neural Networks Learn. Syst..

[6]  Ralph R. Martin,et al.  Incremental Eigenanalysis for Classification , 1998, BMVC.

[7]  Shigeo Abe,et al.  Incremental learning of feature space and classifier for face recognition , 2005, Neural Networks.

[8]  Juyang Weng,et al.  Candid Covariance-Free Incremental Principal Component Analysis , 2003, IEEE Trans. Pattern Anal. Mach. Intell..

[9]  Shigeo Abe,et al.  A Fast Incremental Kernel Principal Component Analysis for Online Feature Extraction , 2010, PRICAI.

[10]  Shaoning Pang,et al.  Incremental Learning of Chunk Data for Online Pattern Classification Systems , 2008, IEEE Transactions on Neural Networks.

[11]  Shaoning Pang,et al.  A Modified Incremental Principal Component Analysis for On-Line Learning of Feature Space and Classifier , 2004, PRICAI.

[12]  Terence D. Sanger,et al.  Optimal unsupervised learning in a single-layer linear feedforward neural network , 1989, Neural Networks.

[13]  E. Oja,et al.  On stochastic approximation of the eigenvectors and eigenvalues of the expectation of a random matrix , 1985 .