使用聚类集成识别银行业务模型

Q1 Economics, Econometrics and Finance Intelligent Systems in Accounting, Finance and Management Pub Date : 2020-04-28 DOI:10.1002/isaf.1471
Bernardo P. Marques, Carlos F. Alves
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引用次数: 4

摘要

银行的商业模式通常被视为同时确定的各种管理选择的结果,例如有关活动类型、资金来源、多样化水平和规模的选择。此外,由于数据的模糊性以及一些银行可能会结合不同业务模式的特征,使用硬聚类方法往往会导致业务模式识别不佳。在本文中,我们提出了一个框架来处理这些挑战,该框架基于三种无监督聚类方法的集合来识别银行业务模型:模糊c-means(允许我们处理模糊聚类)、自组织映射(产生聚类的直观视觉表示)和围绕介质的分区(绕过数据异常值的存在)。我们是在欧洲银行业的背景下进行分析的。在两次金融危机之后,欧洲银行业的监管机构越来越关注于审查受监管实体的商业模式。在我们的实证应用中,我们发现了四种不同的银行业务模式的证据,并进一步区分了具有明确定义的业务模式的银行(核心银行)和其他银行(非核心银行),以及具有稳定的业务模式的银行(持久性银行)和其他银行(非持久性银行)。我们提出的框架在与样本、聚类方法和使用的变量相关的几个鲁棒性检查下表现良好。
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Using clustering ensemble to identify banking business models

The business models of banks are often seen as the result of a variety of simultaneously determined managerial choices, such as those regarding the types of activities, funding sources, level of diversification, and size. Moreover, owing to the fuzziness of data and the possibility that some banks may combine features of different business models, the use of hard clustering methods has often led to poorly identified business models. In this paper we propose a framework to deal with these challenges based on an ensemble of three unsupervised clustering methods to identify banking business models: fuzzy c-means (which allows us to handle fuzzy clustering), self-organizing maps (which yield intuitive visual representations of the clusters), and partitioning around medoids (which circumvents the presence of data outliers). We set up our analysis in the context of the European banking sector, which has seen its regulators increasingly focused on examining the business models of supervised entities in the aftermath of the twin financial crises. In our empirical application, we find evidence of four distinct banking business models and further distinguish between banks with a clearly defined business model (core banks) and others (non-core banks), as well as banks with a stable business model over time (persistent banks) and others (non-persistent banks). Our proposed framework performs well under several robustness checks related with the sample, clustering methods, and variables used.

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来源期刊
Intelligent Systems in Accounting, Finance and Management
Intelligent Systems in Accounting, Finance and Management Economics, Econometrics and Finance-Finance
CiteScore
6.00
自引率
0.00%
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0
期刊介绍: Intelligent Systems in Accounting, Finance and Management is a quarterly international journal which publishes original, high quality material dealing with all aspects of intelligent systems as they relate to the fields of accounting, economics, finance, marketing and management. In addition, the journal also is concerned with related emerging technologies, including big data, business intelligence, social media and other technologies. It encourages the development of novel technologies, and the embedding of new and existing technologies into applications of real, practical value. Therefore, implementation issues are of as much concern as development issues. The journal is designed to appeal to academics in the intelligent systems, emerging technologies and business fields, as well as to advanced practitioners who wish to improve the effectiveness, efficiency, or economy of their working practices. A special feature of the journal is the use of two groups of reviewers, those who specialize in intelligent systems work, and also those who specialize in applications areas. Reviewers are asked to address issues of originality and actual or potential impact on research, teaching, or practice in the accounting, finance, or management fields. Authors working on conceptual developments or on laboratory-based explorations of data sets therefore need to address the issue of potential impact at some level in submissions to the journal.
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