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   Analysis, Simulation and Optimization of LVQ Neural Network Algorithm and Comparison with SOM  
   
نویسنده talati saeed ,hassani ahangar mohammadreza
منبع majlesi journal of telecommunication devices - 2020 - دوره : 9 - شماره : 1 - صفحه:17 -22
چکیده    The neural network learning vector quantization can be understood as a special case of an artificial neural network, more precisely, a learning-based approach - winner takes all. in this paper, we investigate this algorithm and find that this algorithm is a supervised version of the vector quantization algorithm, which should check which input belongs to the class (to update) and improve it according to the distance and class in question. to give. a common problem with other neural network algorithms is the speed vector learning algorithm, which has twice the speed of synchronous updating, which performs better where we need fast enough. the simulation results show the same problem and it is shown that in matlab software the learning vector quantization simulation speed is higher than the self-organized neural network.
کلیدواژه Neural Network ,Learning Vector Quantization ,Self-Organizing Neural Network ,Optimization
آدرس shahid sattari university of aeronautical science and technology, department of electronic warfare engineering, Iran, imam hossein university, department of computer engineering, Iran
پست الکترونیکی mrhasani@ihu.ac.ir
 
     
   
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