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BigBank: A GIS Integrated AHP-TOPSIS Based Expansion Model for Banks

机译:BigBank:基于GIS集成AHP-TOPSIS的银行扩展模型

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Banks require consistent expansion through its lifetime to be competitive and reliable to their customers. But no previous branch expansion model considers both existing customers and branches when solves branch location problems. We propose BigBank model for branch location problem based on clustering-Analytic Hierarchy Process (AHP)-Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) where we consider both parties and their geographical positioning. After applying K-means clustering on uncovered customers, we take cluster centers as primary branch candidates and collect Geographic Information System (GIS) information about them. Then we use experts' opinions on branch location with four criteria and 12 different sub-criteria in the AHP method for ranking. Based on the ranking of the criteria of bank experts, our model computes the best possible location using the TOPSIS ranking method. We implement our model for a commercial bank in Bangladesh and show that our solution is always better in all three metrics considered in this literature from the traditional State of Art solution even in different fiscal years.
机译:银行需要在其整个生命周期中不断扩展,以使其客户具有竞争力和可靠性。但是,在解决分支机构位置问题时,以前的分支机构扩展模型都不会同时考虑现有客户和分支机构。我们提出了一种基于聚类分析层次结构(AHP)-类似于理想解决方案的优先顺序排序技术(TOPSIS)的BigBank模型,该模型考虑了双方及其地理位置。在将K-means聚类应用于未发现的客户之后,我们将聚类中心作为主要分支机构的候选对象,并收集有关它们的地理信息系统(GIS)信息。然后,在AHP方法中,我们使用专家对分支机构位置的意见以及四个标准和12个不同的子标准进行排名。基于银行专家标准的排名,我们的模型使用TOPSIS排名方法来计算最佳位置。我们为孟加拉国的一家商业银行实施了我们的模型,结果表明,即使在不同的财务年度中,从传统的“先进技术”解决方案来看,我们的解决方案在本文中考虑的所有三个指标中也总是更好。

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