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Radial basis function network using Lambert-Tsallis Wq function
Published 18 Apr 2019 in quant-ph and cond-mat.dis-nn | (1904.09185v1)
Abstract: The present work brings two applications of the Lambert-Tsallis Wq function in radial basis function networks (RBFN). Initially, a RBFN is used to discriminate between entangled and disentangled bipartite of qubit states. The kernel used is based on the Lambert-Tsallis Wq function for q = 2 and the quantum relative disentropy is used as distance measure between quantum states. Following, a RBFN with the same kernel is used to estimate the probability density function of a set of data samples.
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