Publication | Open Access
Sparse Coding by Spiking Neural Networks: Convergence Theory and Computational Results
28
Citations
13
References
2017
Year
Sparse CodingEngineeringMachine LearningNeural RecodingFeature ExtractionSocial SciencesNeurodynamicsSparse Neural NetworkSpiking Neural NetworksNeuromorphic EngineeringSpiking Neural NetworkNeurocomputersComputer EngineeringComputer ScienceNeural NetworksDeep LearningSparse Coding ProblemConvergence TheorySparse RepresentationComputational NeuroscienceNeuronal NetworkNeuroscienceBrain-like Computing
In a spiking neural network (SNN), individual neurons operate autonomously and only communicate with other neurons sparingly and asynchronously via spike signals. These characteristics render a massively parallel hardware implementation of SNN a potentially powerful computer, albeit a non von Neumann one. But can one guarantee that a SNN computer solves some important problems reliably? In this paper, we formulate a mathematical model of one SNN that can be configured for a sparse coding problem for feature extraction. With a moderate but well-defined assumption, we prove that the SNN indeed solves sparse coding. To the best of our knowledge, this is the first rigorous result of this kind.
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