2009 | OriginalPaper | Buchkapitel
Incremental Principal Component Analysis Based on Adaptive Accumulation Ratio
verfasst von : Seiichi Ozawa, Kazuya Matsumoto, Shaoning Pang, Nikola Kasabov
Erschienen in: Advances in Neuro-Information Processing
Verlag: Springer Berlin Heidelberg
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We have proposed an online feature extraction method called Chunk Incremental Principal Component Analysis (Chunk IPCA) where a chunk of data is trained at a time to update an eigenspace model. In this paper, we propose an extended version of Chunk IPCA in which a proper threshold for the accumulation ratio is adaptively determined such that the highest classification accuracy is maintained for a validation data set. Whenever a new chunk of training data is given, the validation set is updated in an online fashion by using the
k
-means clustering or through the prototype selection based on the classification results. The experimental results show that the extended version of Chunk IPCA can determine a proper threshold on an ongoing basis, resulting in keeping higher classification accuracy than the original Chunk IPCA.