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http://dx.doi.org/10.7232/iems.2016.15.4.324

Application of a Hybrid System of Probabilistic Neural Networks and Artificial Bee Colony Algorithm for Prediction of Brand Share in the Market  

Shahrabi, Jamal (Department of Industrial Engineering and Management Systems, Amirkabir University of Technology)
Khameneh, Sara Mottaghi (Department of Industrial Engineering and Management Systems, Amirkabir University of Technology)
Publication Information
Industrial Engineering and Management Systems / v.15, no.4, 2016 , pp. 324-334 More about this Journal
Abstract
Manufacturers and retailers are interested in how prices, promotions, discounts and other marketing variables can influence the sales and shares of the products that they produce or sell. Therefore, many models have been developed to predict the brand share. Since the customer choice models are usually used to predict the market share, here we use hybrid model of Probabilistic Neural Network and Artificial Bee colony Algorithm (PNN-ABC) that we have introduced to model consumer choice to predict brand share. The evaluation process is carried out using the same data set that we have used for modeling individual consumer choices in a retail coffee market. Then, to show good performance of this model we compare it with Artificial Neural Network with one hidden layer, Artificial Neural Network with two hidden layer, Artificial Neural Network trained with genetic algorithms (ANN-GA), and Probabilistic Neural Network. The evaluated results show that the offered model is outperforms better than other previous models, so it can be use as an effective tool for modeling consumer choice and predicting market share.
Keywords
Consumer Choice Model; Brand Share; Artificial Neural Network; Modeling; Predicting; Probabilistic Neural Network; Artificial Bee Colony Algorithm;
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