Efficient Moth-Flame-Based Neuroevolution Models

This chapter proposes a new efficient moth-flame-embedded multilayer perceptrons (MLP) neuroevolution model to deal with classification problems. Moth-flame optimizer (MFO) is one of the effective swarm-based metaheuristic methods inspired by the natural direction-finding behaviours of moth insects and their well-known entrapment phenomena when they circulate the non-natural lights and flames. MFO is capable of demonstrating a very promising performance in terms of exploration and exploitation inclinations. The proposed MFO-MLP model is extensively substantiated on 16 benchmark datasets, and the results are compared to well-known methods such as particle swarm optimizer (PSO), population-based incremental learning (PBIL), differential evolution (DE), and genetic algorithm (GA). The obtained results indicate the efficacy of the MFO-embedded neuroevolution model as a potential method in dealing with classification cases.

[1]  Shih-Wei Lin,et al.  Particle swarm optimization for parameter determination and feature selection of support vector machines , 2008, Expert Syst. Appl..

[2]  Hui Huang,et al.  Developing a new intelligent system for the diagnosis of tuberculous pleural effusion , 2018, Comput. Methods Programs Biomed..

[3]  Jeng-Fung Chen,et al.  Training Artificial Neural Networks by a Hybrid PSO-CS Algorithm , 2015, Algorithms.

[4]  Santosh Kumar Majhi,et al.  Classification of Phishing Websites Using Moth-Flame Optimized Neural Network , 2018, Advances in Intelligent Systems and Computing.

[5]  Cunbin Li,et al.  A least squares support vector machine model optimized by moth-flame optimization algorithm for annual power load forecasting , 2016, Applied Intelligence.

[6]  Václav Snásel,et al.  Metaheuristic design of feedforward neural networks: A review of two decades of research , 2017, Eng. Appl. Artif. Intell..

[7]  Kamlesh Mistry,et al.  Intelligent facial emotion recognition using moth-firefly optimization , 2016, Knowl. Based Syst..

[8]  Hossam Faris,et al.  An efficient hybrid multilayer perceptron neural network with grasshopper optimization , 2018, Soft Computing.

[9]  Hui Huang,et al.  Toward an optimal kernel extreme learning machine using a chaotic moth-flame optimization strategy with applications in medical diagnoses , 2017, Neurocomputing.

[10]  Yongquan Zhou,et al.  Lévy-Flight Moth-Flame Algorithm for Function Optimization and Engineering Design Problems , 2016 .

[11]  Ragab A. El-Sehiemy,et al.  An enhanced moth-flame optimizer for solving non-smooth economic dispatch problems with emissions , 2018, Energy.

[12]  Khamron Sunat,et al.  OMFO: A New Opposition-Based Moth-Flame Optimization Algorithm for Solving Unconstrained Optimization Problems , 2017, IC2IT.

[13]  Rui Yao,et al.  A novel intelligent diagnosis method using optimal LS-SVM with improved PSO algorithm , 2017, Soft Computing.

[14]  Pradeep Jangir,et al.  Economic Load Dispatch problem with ramp rate limits and prohibited operating zones solve using Levy flight Moth-Flame optimizer , 2016, 2016 International Conference on Energy Efficient Technologies for Sustainability (ICEETS).

[15]  Aboul Ella Hassanien,et al.  Moth-flame swarm optimization with neutrosophic sets for automatic mitosis detection in breast cancer histology images , 2017, Applied Intelligence.

[16]  Li Li,et al.  Optimization of Water Resources Utilization by Multi-Objective Moth-Flame Algorithm , 2018, Water Resources Management.

[17]  Seyed Mohammad Mirjalili,et al.  Moth-flame optimization algorithm: A novel nature-inspired heuristic paradigm , 2015, Knowl. Based Syst..

[18]  George Cybenko,et al.  Approximation by superpositions of a sigmoidal function , 1992, Math. Control. Signals Syst..

[19]  Dalia Yousri,et al.  Parameters extraction of the three diode model for the multi-crystalline solar cell/module using Moth-Flame Optimization Algorithm , 2016 .

[20]  Qian Zhang,et al.  Multi-strategy boosted mutative whale-inspired optimization approaches , 2019, Applied Mathematical Modelling.

[21]  Qian Zhang,et al.  An efficient chaotic mutative moth-flame-inspired optimizer for global optimization tasks , 2019, Expert Syst. Appl..

[22]  Aboul Ella Hassanien,et al.  An improved moth flame optimization algorithm based on rough sets for tomato diseases detection , 2017, Comput. Electron. Agric..

[23]  Hossam Faris,et al.  Ant Lion Optimizer: Theory, Literature Review, and Application in Multi-layer Perceptron Neural Networks , 2019, Nature-Inspired Optimizers.

[24]  Hossam Faris,et al.  An enhanced associative learning-based exploratory whale optimizer for global optimization , 2019, Neural Computing and Applications.

[25]  Haoran Zhao,et al.  Using GM (1,1) Optimized by MFO with Rolling Mechanism to Forecast the Electricity Consumption of Inner Mongolia , 2016 .

[26]  Soheyl Khalilpourazari,et al.  An efficient hybrid algorithm based on Water Cycle and Moth-Flame Optimization algorithms for solving numerical and constrained engineering optimization problems , 2017, Soft Computing.

[27]  Eric Michielssen,et al.  Genetic algorithm optimization applied to electromagnetics: a review , 1997 .

[28]  Oscar Castillo,et al.  A survey on nature-inspired optimization algorithms with fuzzy logic for dynamic parameter adaptation , 2014, Expert Syst. Appl..

[29]  David H. Wolpert,et al.  No free lunch theorems for optimization , 1997, IEEE Trans. Evol. Comput..

[30]  Mehmet Fatih Tasgetiren,et al.  Differential evolution algorithm with ensemble of parameters and mutation strategies , 2011, Appl. Soft Comput..

[31]  Joni-Kristian Kämäräinen,et al.  Differential Evolution Training Algorithm for Feed-Forward Neural Networks , 2003, Neural Processing Letters.

[32]  Hamdan Daniyal,et al.  Optimal reactive power dispatch solution by loss minimization using moth-flame optimization technique , 2017, Appl. Soft Comput..

[33]  Aboul Ella Hassanien,et al.  Moth-flame optimization for training Multi-Layer Perceptrons , 2015, 2015 11th International Computer Engineering Conference (ICENCO).

[34]  Hossam Faris,et al.  Harris hawks optimization: Algorithm and applications , 2019, Future Gener. Comput. Syst..

[35]  Aboul Ella Hassanien,et al.  Whale Optimization Algorithm and Moth-Flame Optimization for multilevel thresholding image segmentation , 2017, Expert Syst. Appl..

[36]  Rainer Storn,et al.  Differential Evolution – A Simple and Efficient Heuristic for global Optimization over Continuous Spaces , 1997, J. Glob. Optim..

[37]  Dan Simon,et al.  Biogeography-Based Optimization , 2022 .

[38]  W. Pitts,et al.  A Logical Calculus of the Ideas Immanent in Nervous Activity (1943) , 2021, Ideas That Created the Future.