Title of article :
Pattern Recognition Using Particle Swarm Optimization with Proposed a New Conjugate Gradient Parameter in Unconstrained Optimization
Author/Authors :
mitras, ban ahmed university of mosul - college of computer sciences and mathematics - department of intelligent techniques operation research, Iraq , abdul-jabbar, suhaib university of mosul teacher - college of education for pure science - department of computer, Iraq
From page :
138
To page :
147
Abstract :
In this paper, we present modified conjugancy coefficient for the conjugate gradient method. This modification using the extention Dai and Yuan Method to solve non-linear programming problems. The algorithm of particle swarm optimization (PSO) is applied in this work, tocoefficients extracted by features extraction techniques. The sufficient descent and the global convergence properties for the proposed algorithm are proved. The numerical results of our finding for the large scale optimization problem are very encouraging comparison with standard methods The experimental results showed that PSO can generate excellent recognition results with the minimal set of selected features. Finally, the algorithm PSO based approaches are proposed and the influence of PSO parameters on the performance is evaluated.
Keywords :
Particle Swarm Optimization , Pattern recognition , conjugate gradient , conjugancycoefficient , nonlinear programming , and unconstrained optimization.
Journal title :
Al-Nahrain Journal Of Science
Journal title :
Al-Nahrain Journal Of Science
Record number :
2647022
Link To Document :
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