Towards a General Independent Subspace Analysis

Abstract

The increasingly popular independent component analysis (ICA) may only be applied to data following the generative ICA model in order to guarantee algorithmindependent and theoretically valid results. Subspace ICA models generalize the assumption of component independence to independence between groups of components. They are attractive candidates for dimensionality reduction methods, however are currently limited by the assumption of equal group sizes or less general semi-parametric models. By introducing the concept of irreducible independent subspaces or components, we present a generalization to a parameter-free mixture model. Moreover, we relieve the condition of at-most-one-Gaussian by including previous results on non-Gaussian component analysis. After introducing this general model, we discuss joint block diagonalization with unknown block sizes, on which we base a simple extension of JADE to algorithmically perform the subspace analysis. Simulations confirm the feasibility of the algorithm.

Cite

Text

Theis. "Towards a General Independent Subspace Analysis." Neural Information Processing Systems, 2006.

Markdown

[Theis. "Towards a General Independent Subspace Analysis." Neural Information Processing Systems, 2006.](https://mlanthology.org/neurips/2006/theis2006neurips-general/)

BibTeX

@inproceedings{theis2006neurips-general,
  title     = {{Towards a General Independent Subspace Analysis}},
  author    = {Theis, Fabian J.},
  booktitle = {Neural Information Processing Systems},
  year      = {2006},
  pages     = {1361-1368},
  url       = {https://mlanthology.org/neurips/2006/theis2006neurips-general/}
}