大数据分析对银行业的影响:案例研究

Wu He, Jui-Long Hung, Lixin Liu
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引用次数: 2

摘要

本文旨在帮助企业在实践中获得大数据实施的宝贵知识,在积累经验的同时,提高企业的信息管理能力,再利用或调整本文提出的方法,以获得持续的竞争优势。设计/方法/方法在技术参考框架(TFR)和交易成本理论(TCT)理论的指导下,本文描述了银行业的一个现实案例研究,以解释如何帮助企业利用大数据分析来实现变革。通过与银行日常运营和战略规划的紧密结合,本案例研究展示了分析团队如何构建挑战,并使用客户细分(无监督)和产品亲和力预测(有监督)两种分析模型分析数据,从而启动大数据分析在精准营销中的应用。研究结果该研究报告了纵向数据分析的相关发现,并确定了一些关键的成功因素。首先,非技术因素,如直观的分析结果、合适的评估基线、多波实施和营销渠道的选择,对组织的大数据实施进度有重要影响。其次,一场成功的战役还依赖于技术因素。例如,聚类分析可以提高客户的响应率,产品亲和力预测模型可以提高交易效率,降低时间成本。原创性/价值在理论贡献方面,本文从TCT的角度验证了Nagle、Seamans和Tadelis(2010)提出的在线共同基金平台的突出特征并不能保证组织的竞争优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of big data analytics on banking: a case study
PurposeThe paper aims to help enterprises gain valuable knowledge about big data implementation in practice and improve their information management ability, as they accumulate experience, to reuse or adapt the proposed method to achieve a sustainable competitive advantage.Design/methodology/approachGuided by the theory of technological frames of reference (TFR) and transaction cost theory (TCT), this paper describes a real-world case study in the banking industry to explain how to help enterprises leverage big data analytics for changes. Through close integration with bank's daily operations and strategic planning, the case study shows how the analytics team frame the challenge and analyze the data with two analytic models – customer segmentation (unsupervised) and product affinity prediction (supervised), to initiate the adoption of big data analytics in precise marketing.FindingsThe study reported relevant findings from a longitudinal data analysis and identified some key success factors. First, non-technical factors, for example intuitive analytics results, appropriate evaluation baseline, multiple-wave implementation and selection of marketing channels critically influence big data implementation progress in organizations. Second, a successful campaign also relies on technical factors. For example, the clustering analytics could promote customers' response rates, and the product affinity prediction model could boost efficient transaction and lower time costs.Originality/valueFor theoretical contribution, this paper verified that the outstanding characteristics of online mutual fund platforms brought up by Nagle, Seamans and Tadelis (2010) could not guarantee organizations' competitive advantages from the aspect of TCT.
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