Interpreting the neural code with Formal Concept Analysis

Part of Advances in Neural Information Processing Systems 21 (NIPS 2008)

Bibtex Metadata Paper Supplemental

Authors

Dominik Endres, Peter Foldiak

Abstract

We propose a novel application of Formal Concept Analysis (FCA) to neural decoding: instead of just trying to figure out which stimulus was presented, we demonstrate how to explore the semantic relationships between the neural representation of large sets of stimuli. FCA provides a way of displaying and interpreting such relationships via concept lattices. We explore the effects of neural code sparsity on the lattice. We then analyze neurophysiological data from high-level visual cortical area STSa, using an exact Bayesian approach to construct the formal context needed by FCA. Prominent features of the resulting concept lattices are discussed, including indications for a product-of-experts code in real neurons.