Modeling dense relational data



AbstractRelational modelling classically consider sparse and discrete data. Measures of influence computed pairwise between temporal sources naturally give rise to dense continuous-valued matrices, for instance p-values from Granger causality. Due to asymmetry or lack of positive definiteness they are not naturally suited for kernel K-means. We propose a generative Bayesian model for dense matrices which generalize kernel K-means to consider off-diagonal interactions in matrices of interactions, and demonstrate its ability to detect structure on both artificial data and two real data sets.
TypeConference paper [With referee]
ConferenceMachine Learning for Signal Processing (MLSP), 2012 IEEE International Workshop on
Year2012
BibTeX data [bibtex]
IMM Group(s)Intelligent Signal Processing