大数据分析对公司可持续绩效的影响

IF 8.3 2区 管理学 Q1 BUSINESS
Myriam Ertz, Imen Latrous, Ahlem Dakhlaoui, Shouheng Sun
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引用次数: 0

摘要

本研究评估了大数据分析(BDA)对企业可持续绩效(FSP)的影响。BDA被概念化为包括预测性和规范性分析的双重结构,而FSP是从三重底线(TBL)的角度考虑的,包括公司绩效的经济、社会和环境线。这项研究完全依赖于独立的第三方BDA和FSP数据,涉及美国标准普尔500指数和加拿大标准普尔500/TSX60指数的522家公司。使用普通最小二乘(OLS)回归分析数据,结果表明,总体而言,BDA对总体FSP具有直接,积极和显著的影响。零碎分析的结果表明,BDA与经济、社会和环境维度呈正相关。此外,我们对预测分析和规定性分析的区别表明,规定性分析适度优于预测分析获得的FSP结果。该研究的见解为寻求利用数字化来增强企业公民意识,同时提高其数字化能力的公司提供了战略知识。技术,尤其是大数据,对可持续性的影响,在文献中得到了关注,但这是第一个通过解读和量化BDA组件对TBL的影响,深入研究这两个结构之间的详细关系的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The impact of Big Data Analytics on firm sustainable performance

This study evaluates the impact of Big Data Analytics (BDA) on firm sustainable performance (FSP). BDA is conceptualized as a dual construct comprising predictive and prescriptive analytics, while FSP is considered from a triple bottom line (TBL) perspective comprising the economic, social, and environmental lines of firm performance. The study relies exclusively on independent third-party BDA and FSP data pertaining to 522 firms from the US S&P500 Index and the Canadian S&P500/TSX60 Index. The data is analyzed with ordinary least squares (OLS) regression, and the findings reveal, on aggregate, that BDA has a direct, positive, and significant effect on overall FSP. The results of the piecemeal analysis show that BDA is positively related to the economic, social, and environmental dimensions. Furthermore, our distinction between predictive and prescriptive analytics suggests that prescriptive analytics outperforms the FSP results obtained with predictive analytics moderately. The study insights provide strategic knowledge for firms seeking to leverage digitalization for enhanced corporate citizenship while boosting their digital capabilities. The impact of technology, especially Big Data, on sustainability, has gained traction in the literature, yet this is the first study to delve deeper into the detailed relationships between both constructs by deciphering and quantifying the impact of BDA components on the TBL.

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来源期刊
CiteScore
17.20
自引率
16.30%
发文量
189
期刊介绍: Corporate Social Responsibility and Environmental Management is a journal that publishes both theoretical and practical contributions related to the social and environmental responsibilities of businesses in the context of sustainable development. It covers a wide range of topics, including tools and practices associated with these responsibilities, case studies, and cross-country surveys of best practices. The journal aims to help organizations improve their performance and accountability in these areas. The main focus of the journal is on research and practical advice for the development and assessment of social responsibility and environmental tools. It also features practical case studies and evaluates the strengths and weaknesses of different approaches to sustainability. The journal encourages the discussion and debate of sustainability issues and closely monitors the demands of various stakeholder groups. Corporate Social Responsibility and Environmental Management is a refereed journal, meaning that all contributions undergo a rigorous review process. It seeks high-quality contributions that appeal to a diverse audience from various disciplines.
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