Maximum Covariance Unfolding : Manifold Learning for Bimodal Data

Mahadevan, Vijay, Wong, Chi W., Pereira, Jose C., Liu, Tom, Vasconcelos, Nuno, Saul, Lawrence K.

Neural Information Processing Systems 

We propose maximum covariance unfolding (MCU), a manifold learning algorithm for simultaneous dimensionality reduction of data from different input modalities. Given high dimensional inputs from two different but naturally aligned sources, MCU computes a common low dimensional embedding that maximizes the cross-modal (inter-source) correlations while preserving the local (intra-source) distances. In this paper, we explore two applications of MCU. First we use MCU to analyze EEG-fMRI data, where an important goal is to visualize the fMRI voxels that are most strongly correlated with changes in EEG traces. To perform this visualization, we augment MCU with an additional step for metric learning in the high dimensional voxel space.