YANG Jing, LI Wen-ping, ZHANG Jian-pei. A Tracking Algorithm Based on Rank Two Modifications for Canonical Correlation Analysis of Multidimensional Data Streams[J]. Acta Electronica Sinica, 2012, 40(9): 1765-1774.
DOI:
YANG Jing, LI Wen-ping, ZHANG Jian-pei. A Tracking Algorithm Based on Rank Two Modifications for Canonical Correlation Analysis of Multidimensional Data Streams[J]. Acta Electronica Sinica, 2012, 40(9): 1765-1774. DOI: 10.3969/j.issn.0372-2112.2012.09.011.
A Tracking Algorithm Based on Rank Two Modifications for Canonical Correlation Analysis of Multidimensional Data Streams
Existing algorithms for canonical correlation analysis(CCA) of multidimensional data streams are mostly based on approximate techniques
but are not the precise algorithms for updates in essence.In this study
a novel canonical correlation analysis algorithm
called TCCA(Tracking CCA)
is proposed for tracking the correlations rapidly and accurately between two multidimensional data streams in the time-varying environments.By introducing the technique of rank two modifications to update the eigen-subspace of the sample covariance matrix in parallel
TCCA can rapidly track the correlations of data streams.Theoretical analysis and experimental results indicate that the TCCA algorithm has better stability
high computational efficiency and accuracy.It could be presented as a basic tool for correlation detection on data streams
feature fusion
dimension reduction and other areas of data streams mining.