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DBN Structure Design Algorithm for Different Datasets Based on Information Entropy and Reconstruction Error
2018
Entropy
Deep belief networks (DBNs) of deep learning technology have been successfully used in many fields. However, the structure of a DBN is difficult to design for different datasets. Hence, a DBN structure design algorithm based on information entropy and reconstruction error is proposed. Unlike previous algorithms, we innovatively combine network depth and node number and optimizes them simultaneously. First, the mathematical model of the structural design problem is established, and the boundary
doi:10.3390/e20120927
pmid:33266651
pmcid:PMC7512514
fatcat:mrqy3tikevbdvo2ghw4sgsxk4u