Compressed sensing, sparsity, and dimensionality in neuronal information processing and data analysis

Surya Ganguli*, Haim Sompolinsky

*Corresponding author for this work

Research output: Contribution to journalReview articlepeer-review

188 Scopus citations

Abstract

The curse of dimensionality poses severe challenges to both technical and conceptual progress in neuroscience. In particular, it plagues our ability to acquire, process, and model high-dimensional data sets. Moreover, neural systems must cope with the challenge of processing data in high dimensions to learn and operate successfully within a complex world. We review recent mathematical advances that provide ways to combat dimensionality in specific situations. These advances shed light on two dual questions in neuroscience. First, how can we as neuroscientists rapidly acquire high-dimensional data from the brain and subsequently extract meaningful models from limited amounts of these data? And second, how do brains themselves process information in their intrinsically high-dimensional patterns of neural activity as well as learn meaningful, generalizable models of the external world from limited experience?.

Original languageEnglish
Pages (from-to)485-508
Number of pages24
JournalAnnual Review of Neuroscience
Volume35
DOIs
StatePublished - Jul 2012

Keywords

  • communication
  • connectomics
  • generalization
  • imaging
  • learning
  • memory
  • random projections

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