2015
DOI: 10.1007/s11063-015-9458-x
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Matrixized Learning Machine with Feature-Clustering Interpolation

Abstract: The existing matrixized learning machines (MLMs) use bilateral weight vectors on both side of one pattern as the constraints to manipulate matrix-based datasets directly. However, MLM might be challenged while the input pattern is a vector whose features are independent from each others. The traditional solution is to transform the vector into its all corresponding matrix forms, which is not only irrational, but also requiring extra computation in preprocessing. To overcome the problem, this paper proposes a n… Show more

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“…The baseline test accuracies are comparable to prior reported accuracies for unsupervised learning on both datasets [8], [36]). Table I lists the network simulation parameters used in this work.…”
Section: A Datasets and Implementationsupporting
confidence: 64%
“…The baseline test accuracies are comparable to prior reported accuracies for unsupervised learning on both datasets [8], [36]). Table I lists the network simulation parameters used in this work.…”
Section: A Datasets and Implementationsupporting
confidence: 64%