Kernel Hyperalignment

@inproceedings{Lorbert2012KernelH,
  title={Kernel Hyperalignment},
  author={Alexander Lorbert and Peter J. Ramadge},
  booktitle={NIPS},
  year={2012}
}
We offer a regularized, kernel extension of the multi-set, orthogonal Procrustes problem, or hyperalignment. Our new method, called Kernel Hyperalignment, expands the scope of hyperalignment to include nonlinear measures of similarity and enables the alignment of multiple datasets with a large number of base features. With direct application to fMRI data analysis, kernel hyperalignment is well-suited for multi-subject alignment of large ROIs, including the entire cortex. We report experiments… CONTINUE READING
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