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   the comparison of neural networks’ structures for forecasting  
   
نویسنده slimani ilham ,el farissi ilhame ,achchab said
منبع international journal of supply and operations management - 2017 - دوره : 4 - شماره : 2 - صفحه:105 -114
چکیده    This paper considers the application of neural networks to demand forecasting in a simple supply chain composed of a single retailer and his supplier with a game theoretic approach. this work analyses the problem from the supplier’s point of view and the employed dataset in our experimentation is provided from a recognized supermarket in morocco. various attempts were made in order to optimize the total network error and the findings indicate that different neural net structures can be used to forecast demand such as adaline, multi-layer perceptron (mlp), or radial basis function (rbf) network. however, the most adequate one with optimal error is the mlp architecture.
کلیدواژه neural networks ,artificial intelligence ,supply chain management ,information sharing ,demand forecasting ,game theory
آدرس mohammed v university, national higher school for computer science and system analysis (ensias), al-qualsadi research and development team, morocco, mohammed first university, national school of applied sciences (ensao), laboratory lse2i, morocco, mohammed v university, national higher school for computer science and system analysis (ensias), al-qualsadi research and development team, morocco
پست الکترونیکی ahchab@ensias.ma
 
     
   
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