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Sparse Non-Linear CCA through Hilbert-Schmidt Independence Criterion

This repository contains the MATLAB codes applied in the experiments of [1].

Contents

  • The scca-hsic folder contains the implementation of SCCA-HSIC and its Nyström approximated variant.

  • The experiments folder contains scripts that can be used to analyse the performance of SCCA-HSIC when the number of related and noise variables increases. Scripts to test the scalability of the Nyström variant are also included.

  • The tutorial folder contains example scripts to get acquainted with SCCA-HSIC.

Real Datasets

Authors and Contact Information

* Answer considerations regarding the codes

Reference

[1] Uurtio, V., Bhadra, S., Rousu, J. Sparse Non-Linear CCA through Hilbert-Schmidt Independence Criterion. IEEE International Conference on Data Mining (ICDM 2018), to appear