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Validation of Large-Scale Classification Problem in Dendritic Neuron Model Using Particle Antagonism Mechanism

Dongbao Jia, Yuka Fujishita, Cunhua Li, Yuki Todo, Hongwei Dai

2020Electronics20 citationsDOIOpen Access PDF

Abstract

With the characteristics of simple structure and low cost, the dendritic neuron model (DNM) is used as a neuron model to solve complex problems such as nonlinear problems for achieving high-precision models. Although the DNM obtains higher accuracy and effectiveness than the middle layer of the multilayer perceptron in small-scale classification problems, there are no examples that apply it to large-scale classification problems. To achieve better performance for solving practical problems, an approximate Newton-type method-neural network with random weights for the comparison; and three learning algorithms including back-propagation (BP), biogeography-based optimization (BBO), and a competitive swarm optimizer (CSO) are used in the DNM in this experiment. Moreover, three classification problems are solved by using the above learning algorithms to verify their precision and effectiveness in large-scale classification problems. As a consequence, in the case of execution time, DNM + BP is the optimum; DNM + CSO is the best in terms of both accuracy stability and execution time; and considering the stability of comprehensive performance and the convergence rate, DNM + BBO is a wise choice.

Topics & Concepts

Computer scienceParticle swarm optimizationStability (learning theory)PerceptronConvergence (economics)Artificial neural networkNonlinear systemScale (ratio)Rate of convergenceArtificial intelligenceMathematical optimizationMachine learningKey (lock)MathematicsQuantum mechanicsComputer securityPhysicsEconomicsEconomic growthMetaheuristic Optimization Algorithms ResearchMachine Learning and ELMNeural Networks and Applications
Validation of Large-Scale Classification Problem in Dendritic Neuron Model Using Particle Antagonism Mechanism | Litcius