The Use of Inside-Out and Outside-In Big Data Analytics on E-Platforms: Performance Impacts and Heterogeneity Analysis

IF 4.2 3区 管理学 Q2 BUSINESS
Yuan Liu, Yuzhu Zheng, June Wei, Yang Yang
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引用次数: 1

Abstract

ABSTRACT Big data has brought unprecedented opportunities and challenges, prompting global firms to grow big data analytics (BDA) investments, especially in a turbulent business environment. However, there is insufficient empirical evidence in scholarly research on whether and how using BDA functions of various types creates business value. The current study divides BDA into inside-out and outside-in types and explores whether and how firms can create value by using functions of these two types of BDA. Then, the knowledge-based view (KBV) is applied as a theoretical foundation to investigate the independent and combined impacts of inside-out and outside-in BDA usage on firms’ sales performance. Furthermore, we build a quantile regression model to analyze the heterogeneity of independent and combined impacts among firms with different performance levels. The empirical study is based on a unique dataset collected on one of the largest electronic platforms (e-platforms) in China from 785 firms in 35 weeks. The results of the benchmark model based on two-way fixed effects show that both inside-out and outside-in BDA usage, as well as their interactions, are positively related to the sales performance of firms on e-platforms. The heterogeneity analysis indicates that inside-out (outside-in) BDA functions have a greater degree of impact on firms with lower (higher) sales performance. Through the theoretical and empirical analysis of the complex performance impacts of BDA usage, this study enriches the understanding of value creation in using multiple BDA functions and extends the theoretical account of KBV in the field of BDA.
在电子平台上使用由内到外和由外到内的大数据分析:性能影响和异质性分析
大数据带来了前所未有的机遇和挑战,促使全球企业加大对大数据分析(BDA)的投资,尤其是在动荡的商业环境中。然而,对于使用各种类型的BDA功能是否以及如何创造商业价值,学术界的研究缺乏经验证据。本研究将BDA分为由内到外和由外到内两种类型,并探讨企业是否以及如何利用这两种类型的BDA功能来创造价值。在此基础上,以知识为基础,探讨了由内而外和由外而内的BDA使用对企业销售绩效的独立和联合影响。在此基础上,建立了分位数回归模型,分析了不同绩效水平企业独立影响和综合影响的异质性。该实证研究基于一个独特的数据集,该数据集是在中国最大的电子平台之一(e-platform)上收集的,来自785家公司,历时35周。基于双向固定效应的基准模型结果表明,由内到外和由外到内的BDA使用及其交互作用与企业在电子平台上的销售绩效呈正相关。异质性分析表明,由内到外(由外到内)的BDA函数对销售业绩越低(越高)的企业影响越大。本研究通过对BDA使用的复杂绩效影响的理论和实证分析,丰富了对多种BDA功能的价值创造的理解,拓展了KBV在BDA领域的理论阐述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Electronic Commerce
International Journal of Electronic Commerce 工程技术-计算机:软件工程
CiteScore
7.20
自引率
16.00%
发文量
18
审稿时长
>12 weeks
期刊介绍: The International Journal of Electronic Commerce is the leading refereed quarterly devoted to advancing the understanding and practice of electronic commerce. It serves the needs of researchers as well as practitioners and executives involved in electronic commerce. The Journal aims to offer an integrated view of the field by presenting approaches of multiple disciplines. Electronic commerce is the sharing of business information, maintaining business relationships, and conducting business transactions by digital means over telecommunications networks. The Journal accepts empirical and interpretive submissions that make a significant novel contribution to this field.
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