Artificial Neural Network and Analytical Hierarchy Process Integration: A Tool to Estimate Business Strategy of Bank

Mochammad Ridwan Ristyawan
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Abstract

Objective – The disruption has been occurring in financial services. Thus, rethinking a new strategy for banking is needed to make a sustainable innovation in organizations. Studies mentioned that formulating strategy is a very costly, time-consuming, and comprehensive analysis. The purpose of this study is to present an integrated intelligence algorithm for estimating the bank’s strategy in Indonesia. Methodology – This study used the integration model between two modules. The algorithm has two basic modules, called Artificial Neural Network (ANN) and Analytical Hierarchy Process (AHP). AHP is capable of handling a multi-level decision-making structure with the use of five expert judgments in the pairwise comparison process. Meanwhile, ANN is utilized as an inductive algorithm in discovering the predictive strategy of the bank and used to explain the strategic factors which improved in forward. Findings and Novelty – The empirical results indicate that ANN and AHP integration was proved to predict the business strategy of the bank in five scenarios. Strategy 5 was the best choice for the bank and Innovate Like Fintechs (ILF) is the most factor consideration. The strategy choice was appropriate for the condition of the bank’s factors. This framework can be implemented to help bankers to decide on bank operations. Type of Paper: Empirical JEL Classification: M15, O32. Keywords: Bank’s strategy, ANN, AHP, BSC, Indonesia. Reference to this paper should be made as follows: Ristyawan, M.R. (2021). Artificial Neural Network and Analytical Hierarchy Process Integration: A Tool to Estimate Business Strategy of Bank, Journal of Finance and Banking Review, 5(4): 01 – 09. https://doi.org/10.35609/jfbr.2021.5.4(1)
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人工神经网络与层次分析法整合:银行经营策略评估工具
目标-金融服务已经出现了中断。因此,需要重新思考新的银行战略,以实现组织的可持续创新。研究指出,制定战略是一项非常昂贵、耗时和全面的分析。本研究的目的是提出一种综合智能算法来估计该银行在印度尼西亚的战略。方法论:本研究采用了两个模块之间的集成模型。该算法有两个基本模块,分别是人工神经网络(ANN)和层次分析法(AHP)。AHP能够处理多层次的决策结构,并在两两比较过程中使用五个专家判断。同时,将人工神经网络作为一种归纳算法用于发现银行的预测策略,并用于解释向前改进的策略因素。研究发现与新颖性——实证结果表明,人工神经网络和层次分析法的整合被证明可以预测五种情景下的银行经营战略。战略5是银行的最佳选择,创新金融科技(ILF)是最重要的考虑因素。该战略选择符合银行自身因素的条件。这个框架可以用来帮助银行家决定银行的业务。论文类型:EmpiricalJEL分类:M15, O32。关键词:银行战略,人工神经网络,层次分析法,平衡计分卡,印度尼西亚。本文的参考文献如下:Ristyawan, M.R.(2021)。人工神经网络与层次分析法集成:银行经营战略评估工具,金融评论,5(4):01 - 09。https://doi.org/10.35609/jfbr.2021.5.4 (1)
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