How does worker mobility affect business adoption of a new technology? The case of machine learning

IF 6.5 1区 管理学 Q1 BUSINESS
Ruyu Chen, Natarajan Balasubramanian, Chris Forman
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Abstract

Research SummaryWe investigate how worker mobility influences the adoption of a new technology using state‐level changes to the enforceability of noncompete agreements as an exogenous shock to worker mobility. Using data on over 153,000 establishments from 2010 and 2018, we find that changes that facilitate worker movements are associated with a significant decline in the likelihood of adoption of machine learning. Moreover, we find that the magnitude of decline depends upon the size of the establishment, the extent of predictive analytics adoption in its industry, and the number of large establishments in the same industry‐location. These results are consistent with the view that increases in outward worker mobility increase costs for adoption of a new technology that involves significant downstream investments in the early years of its diffusion.Managerial SummarySuccessful business adoption of new technologies such as machine learning requires skilled workers with experience in implementing those technologies. In the early years of technology diffusion workers in early adopting businesses typically acquire these skills through on‐the‐job learning that is paid for by the adopter. So, if such early adopters face an increased risk of those skilled workers quitting, then their incentives to adopt the technology decrease. We examine this possibility using changes in noncompete enforceability as a proxy for changes in worker mobility and find that the likelihood of adopting machine learning decreases as the risk of worker mobility increases, particularly for larger establishments, establishments in industries where adoption may be more beneficial and in locations with many large competing establishments.
员工流动性如何影响企业对新技术的采用?机器学习案例
研究摘要我们利用州一级对竞业禁止协议可执行性的改变作为工人流动性的外生冲击,研究了工人流动性如何影响新技术的采用。利用 2010 年至 2018 年超过 153,000 家企业的数据,我们发现,促进工人流动的变化与采用机器学习的可能性显著下降有关。此外,我们还发现,下降的幅度取决于企业的规模、其所在行业采用预测分析技术的程度以及同一行业地点大型企业的数量。这些结果与以下观点相一致,即工人向外流动性的增加会增加采用新技术的成本,因为在新技术推广的最初几年,需要大量的下游投资。管理总结企业要成功采用机器学习等新技术,需要有实施这些技术经验的熟练工人。在技术推广的最初几年,早期采用技术的企业的员工通常是通过在职学习获得这些技能的,学习费用由采用者支付。因此,如果这些早期采用者面临这些熟练工人辞职的风险增加,那么他们采用技术的积极性就会降低。我们用竞业禁止的可执行性的变化来替代工人流动性的变化,对这种可能性进行了研究,结果发现,随着工人流动风险的增加,采用机器学习的可能性也会降低,尤其是对于规模较大的企业、采用机器学习可能更有利的行业中的企业以及有许多大型竞争企业的地区。
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来源期刊
CiteScore
13.70
自引率
8.40%
发文量
109
期刊介绍: At the Strategic Management Journal, we are committed to publishing top-tier research that addresses key questions in the field of strategic management and captivates scholars in this area. Our publication welcomes manuscripts covering a wide range of topics, perspectives, and research methodologies. As a result, our editorial decisions truly embrace the diversity inherent in the field.
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