2014
DOI: 10.1016/j.neunet.2014.08.004
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Logarithmic learning for generalized classifier neural network

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Cited by 9 publications
(5 citation statements)
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References 11 publications
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“…The value of critical sensitivity is above ninety percent in both cases. The reached maximum accuracy value is fully comparable to other presented results (Kulluk et al 2012;Ozyildirim and Avci 2014;Asafuddoula et al 2017;Yin and Gelenbe 2018) summarized in Tables 4 and 5 along with reached minimum and maximal accuracy together with placement among benchmark techniques.…”
Section: Case Study: Iris Flower Classification Tasksupporting
confidence: 87%
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“…The value of critical sensitivity is above ninety percent in both cases. The reached maximum accuracy value is fully comparable to other presented results (Kulluk et al 2012;Ozyildirim and Avci 2014;Asafuddoula et al 2017;Yin and Gelenbe 2018) summarized in Tables 4 and 5 along with reached minimum and maximal accuracy together with placement among benchmark techniques.…”
Section: Case Study: Iris Flower Classification Tasksupporting
confidence: 87%
“…As seen in Tables 4 and 5 our method is comparable with standard techniques of classification. To see how competitive our results are, we went through several papers on this topic (Kulluk et al 2012;Ozyildirim and Avci 2014;Rani and Ganesh 2014;Abdar et al 2017;Asafuddoula et al 2017;Kahramanli 2017;Aslan et al 2018;Li and Chen 2018;Talabni and Engin 2018;Yin and Gelenbe 2018;Austria et al 2019;Chan and Chin 2019;Kraipeerapun and Amornsamankul 2019;Rahman et al 2020). The rank of our novel method has been evaluated for every dataset and during both training and cross-validation processes.…”
Section: Application To Other Pattern Setsmentioning
confidence: 99%
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“…To manage those problems, the latest study offers a solution using a Logarithmic learning generalized classifier neural network (LGCNN) [20], [21], [27]. The difference of this method with other RBF neural network is in using a logarithmic function to calculate the error for each epoch [12]. With this function, it will decrease the iteration to get the minimum error.…”
Section: Generalized Classifier Neural Networkmentioning
confidence: 99%
“…In recent years, a large number of experts have done a lot of works on this issue. Such as in [14], a logarithmic learning method for generalized classifier neural network was presented to handle the convergence problem and improve the rate of convergence when the initial smoothing parameter value deviated from the optimal one. Moreover, an adaptive state-feedback controller based on neural networks for a class of high-order stochastic uncertain systems was designed to eliminate the unknown nonlinearities restrictions in [15].…”
Section: Introductionmentioning
confidence: 99%