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Titlebook: Artificial Neural Networks - ICANN 2007; 17th International C Joaquim Marques Sá,Luís A. Alexandre,Danilo Mandic Conference proceedings 200

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Recurrent Bayesian Reasoning in Probabilistic Neural Networksonal probability distributions by finite mixtures of product components. The mixture components can be interpreted as probabilistic neurons in neurophysiological terms and, in this respect, the fixed probabilistic description becomes conflicting with the well known short-term dynamic properties of b
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Resilient Approximation of Kernel Classifiersge. Approximating the SVM by a more sparse function has been proposed to solve to this problem. In this study, different variants of approximation algorithms are empirically compared. It is shown that gradient descent using the improved Rprop algorithm increases the robustness of the method compared
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Incremental Learning of Spatio-temporal Patterns with Model Selectioning through sleep (ILS)” method. This method alternately repeats two learning phases: awake and sleep. During the awake phase, the system learns new spatio-temporal patterns by rote, whereas in the sleep phase, it rehearses the recorded new memories interleaved with old memories. The rehearsal proce
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Analysis and Comparative Study of Source Separation Performances in Feed-Forward and Feed-Back BSSs m in the solution space, and signal distortion is likely to occur in convolutive mixtures. On the other hand, the FB-BSS structure does not cause signal distortion. However, it requires a condition on the propagation delays in the mixing process. In this paper, source separation performance in the F
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Joaquim Marques Sá,Luís A. Alexandre,Danilo Mandic
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