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A decision support system for selecting convenience store location through integration of fuzzy AHP and artificial neural network

机译:模糊层次分析法与人工神经网络集成的便利店选址决策支持系统。

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摘要

Location selection plays a very prominent role in retailing due to its high and long-term investments. It is very difficult to make up once an inappropriate convenience store (CVS) location has been established. The conventional approaches to location selection can only provide a set of systematic steps for problem-solving without considering the relationships between the decision factors globally. Therefore, this study alms to develop a decision support system for locating a new CVS. The proposed system consists of four components: (1) hierarchical structure development for fuzzy analytic hierarchy process (fuzzy AHP), (2) weights determination, (3) data collection, and (4) decision making. In the first component, the hierarchical structure of fuzzy AHP is formulated by reviewing the related references and interviewing the retailing experts. Then, a questionnaire survey is conducted to determine the weight of each factor in the second component, while the corresponding data are collected through some government publications and actual investigation. Finally, a feedforward neural network with error back-propagation (EBP) learning algorithm is applied to study the relationship between the factors and the store performance. The results show that proposed system is able to provide more accurate result than regression model in accuracy.
机译:由于其长期和长期的投资,地点选择在零售中扮演着非常重要的角色。一旦建立了不合适的便利店(CVS)位置,就很难弥补。常规的位置选择方法只能提供一组系统的解决问题的步骤,而无需考虑全局决策因素之间的关系。因此,本研究致力于开发用于定位新CVS的决策支持系统。该系统由四个部分组成:(1)用于模糊层次分析的层次结构开发;(2)权重确定;(3)数据收集;(4)决策。在第一部分中,模糊AHP的层次结构是通过查阅相关参考资料并采访零售专家来制定的。然后,进行问卷调查以确定第二部分中每个因素的权重,同时通过一些政府出版物和实际调查收集相应的数据。最后,采用带有误差反向传播(EBP)学习算法的前馈神经网络来研究因素与存储性能之间的关系。结果表明,所提出的系统能够提供比回归模型更准确的结果。

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