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An integrated data envelopment analysis–artificial neural network approach for benchmarking of bank branches

机译:集成数据包络分析-人工神经网络方法对银行分支机构进行基准测试

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Efficiency and quality of services are crucial to today’s banking industries. The competition in this section has become increasingly intense, as a result of fast improvements in Technology. Therefore, performance analysis of the banking sectors attracts more attention these days. Even though data envelopment analysis (DEA) is a pioneer approach in the literature as of an efficiency measurement tool and finding benchmarks, it is on the other hand unable to demonstrate the possible future benchmarks. The drawback to it could be that the benchmarks it provides us with, may still be less efficient compared to the more advanced future benchmarks. To cover for this weakness, artificial neural network is integrated with DEA in this paper to calculate the relative efficiency and more reliable benchmarks of one of the Iranian commercial bank branches. Therefore, each branch could have a strategy to improve the efficiency and eliminate the cause of inefficiencies based on a 5-year time forecast.
机译:效率和服务质量对当今的银行业至关重要。由于技术的快速进步,这一部分的竞争变得越来越激烈。因此,最近对银行业的绩效分析引起了更多关注。尽管数据包络分析(DEA)是文献中作为效率测量工具和寻找基准的一种先驱方法,但另一方面却无法证明可能的未来基准。它的缺点可能是它提供给我们的基准与更高级的未来基准相比仍然效率较低。为了弥补这一不足,本文将人工神经网络与DEA集成在一起,以计算伊朗一家商业银行分支机构的相对效率和更可靠的基准。因此,每个分支机构都可以根据5年的时间预测制定提高效率并消除效率低下原因的策略。

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