Analytic Study of Complex Fractional Tsallis’ Entropy with Applications in CNNs
Abstract
:1. Introduction
2. Results
2.1. Bernoulli Function
2.2. Gaussian Function
2.3. Fractional Sigmoid Function FSF
3. Complex-Valued Neural Networks
Numerical Examples
4. Discussion
- Equation (10) refers to the amount of information in the complex system, which is given in the CNN. The advantage is that CNN does not depend on the number of neurons to get full training of the system (see [11,12,13,14,15,26]). Furthermore, the complex value of the output converges to the stability state faster than the real value. All the complex value outputs are given in the open unit disk where (see [16]). In this case, we may use the properties of geometry function theory (GFT). For example, the sigmoid function of the complex value is studied widely in view of GFT. The convexity and other geometric representations of this function have been studied by many authors (see [27]).
- The parameter from is: the simplest non-trivial perturbation of any unperturbed complex system; the complex system (CNN) in which obvious necessary and sufficient conditions are recognized for a small divisor problem is stable.
- The output may cause a complex-valued function incited by the set In this situation, the stability comes from the first derivative of with respect to z. This type of stability is called Lyapunov stability. At a fixed point :At a periodic point of period ℘, the first derivative of a function:
- At a non-periodic point, the derivative, can be iterated by:
- The above derivative can be replaced by any derivative for a complex variable such as the Schwarzian derivative. We may suggest this as a future work.
- Derivative with respect to (parametric derivative): This type of derivative is called the distance estimation method. In this case, CNN has one output in the set , and it is fixed. Therefore, we suggest to use the parameter plane collecting information. This occurs as follows: On the parameter plane: is a variable, and is constant. The first derivative of with respect to is given by the relation:This derivative can be defined by the following iteration:
5. Conclusions and Future Research
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
parameter | |
diffusion constant | |
z | complex number |
complex probability | |
real set of events | |
imaginary set of events | |
probability in the real set | |
probability in the imaginary set | |
U | the open unit disk |
the degree of our knowledge of the random experiment; it is the square of the norm of z | |
CFTE | |
the real part of CFTE | |
Gaussian function | |
gamma function | |
total information | |
the energy | |
the upper bound of energy |
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Ibrahim, R.W.; Darus, M. Analytic Study of Complex Fractional Tsallis’ Entropy with Applications in CNNs. Entropy 2018, 20, 722. https://doi.org/10.3390/e20100722
Ibrahim RW, Darus M. Analytic Study of Complex Fractional Tsallis’ Entropy with Applications in CNNs. Entropy. 2018; 20(10):722. https://doi.org/10.3390/e20100722
Chicago/Turabian StyleIbrahim, Rabha W., and Maslina Darus. 2018. "Analytic Study of Complex Fractional Tsallis’ Entropy with Applications in CNNs" Entropy 20, no. 10: 722. https://doi.org/10.3390/e20100722
APA StyleIbrahim, R. W., & Darus, M. (2018). Analytic Study of Complex Fractional Tsallis’ Entropy with Applications in CNNs. Entropy, 20(10), 722. https://doi.org/10.3390/e20100722