基于希尔波特独立性准则的ICA算法
代码说明:
资源描述 |--------------------| | FAST KERNEL ICA | |--------------------| Version 1.0 - February 2007 MPL license, see below This package contains a Matlab implementation of the Fast Kernel ICA algorithm as described in [1]. Kernel ICA is based on minimizing a kernel measure of statistical independence, namely the Hilbert-Schmidt norm of the covariance operator in feature space (see [3]: this is called HSIC). Given an (n x m) matrix W of n samples from m mixed sources, the goal is to find a demixing matrix X such that the dependence between the estimated unmixed sources X"*W is minimal. FastKICA uses an approximate Newton method to perfom this optimization. For more information on the algorithm, read [1],
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