Publication | Closed Access
Replicator Neural Networks for Universal Optimal Source Coding
134
Citations
26
References
1995
Year
Artificial IntelligenceGeometric LearningDistributed Source CodingEngineeringMachine LearningData ScienceJoint Source-channel CodingManifold LearningSparse Neural NetworkOptimal Data CompressionNetwork AnalysisReplicator Neural NetworksManifold ModelingComputer ScienceNonlinear Dimensionality ReductionDeep LearningData Manifolds
Replicator neural networks self-organize by using their inputs as desired outputs; they internally form a compressed representation for the input data. A theorem shows that a class of replicator networks can, through the minimization of mean squared reconstruction error (for instance, by training on raw data examples), carry out optimal data compression for arbitrary data vector sources. Data manifolds, a new general model of data sources, are then introduced and a second theorem shows that, in a practically important limiting case, optimal-compression replicator networks operate by creating an essentially unique natural coordinate system for the manifold.
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