Nonlinear Generalized Canonical Correlation Analysis by Neural Network Models
نویسندگان
چکیده
A method ofK-set canonical correlation analysis capable of joint multivariate nonlinear transformations of data was proposed. The method consists ofK nonlinear data transformation modules, each of which is a multilayered feed-forward network, and one integrator module which combines information from the K transformation modules. The proposed method is useful for integrating information from K concurrent sources.
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