Design and development of inventory knowledge discovery system |
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Authors: | CKM Lee Catalin Mitrea W.H. Ip KL Choy GTS Ho |
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Affiliation: | 1. Department of Industrial and Systems Engineering, The Hong Kong Polytechnic University, Hong Kong, China;2. School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore |
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Abstract: | Inventory management (IM) performance is affected by the forecasting accuracy of both demand and supply. In this paper, an inventory knowledge discovery system (IKDS) is designed and developed to forecast and acquire knowledge among variables for demand forecasting. In IKDS, the TREes PArroting Networks (TREPAN) algorithm is used to extract knowledge from trained networks in the form of decision trees which can be used to understand previously unknown relationships between the input variables so as to improve the forecasting performance for IM. The experimental results show that the forecasting accuracy using TREPAN is superior to traditional methods like moving average and autoregressive integrated moving average. In addition, the knowledge extracted from IKDS is represented in a comprehensible way and can be used to facilitate human decision-making. |
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Keywords: | Artificial neural network forecasting inventory management knowledge discovery systems TREPAN algorithm |
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