2022
DOI: 10.2139/ssrn.4049824
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Artificial Intelligence and Firm-Level Productivity

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Cited by 13 publications
(16 citation statements)
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“…However, after controlling for training and other confounding factors, educational attainments -proxied by the share of employees with a university degree -do not exhibit a statistically significant link with AI use. 42 Overall, this evidence suggests that while generic skills are relevant, ICT skills constitute a necessary complementary asset to use AI algorithms. More in-depth ICT skills, as proxied by the presence of ICT specialists or ICT training, may be particularly relevant in this early stage of AI diffusion.…”
Section: Factors Complementary To Ai Usementioning
confidence: 94%
See 1 more Smart Citation
“…However, after controlling for training and other confounding factors, educational attainments -proxied by the share of employees with a university degree -do not exhibit a statistically significant link with AI use. 42 Overall, this evidence suggests that while generic skills are relevant, ICT skills constitute a necessary complementary asset to use AI algorithms. More in-depth ICT skills, as proxied by the presence of ICT specialists or ICT training, may be particularly relevant in this early stage of AI diffusion.…”
Section: Factors Complementary To Ai Usementioning
confidence: 94%
“…The variable "Training of Employees" equals 1 if the firm invests in employees' training a part of personnel expenditure greater than the sector median, 0 otherwise. The variable "Skilled Employees" takes value 1 when at least 50% of employees have at least a university degree, 0 otherwise 42. See alsoCalvino et al (2022[1]) for additional evidence about tertiary education and AI use focusing on the United Kingdom.…”
mentioning
confidence: 99%
“…To best capture the extensive margin of AI use across industries, we combine usage rates across AI-related technologies. That said, our findings largely represent variation in the use of "machine learning" in production.3 Young firms are disproportionately single-unit, and hence straightforward to situate geographically.4 Studies of AI use and impacts outside of the United States have been on the rise, including in Europe(Czarnitzki et al, 2023;Hoffreumon et al, 2023), China(Beraja et al, 2023;Lu et al, 2023), Canada(Alexopoulos & Cohen, 2018), and in the context of international tradeGoldfarb & Trefler, 2019).5 See alsoAlcacer and Delgado (2016),Delgado et al (2010), andForman et al (2005), inter alia.6 For example,Akcigit et al (2022),Botelho et al (2021),Catalini et al (2019), and Lerner and Nanda (2020).7 SeeBrynjolfsson and Milgrom (2013) for more on complementarity theory and a review of the literature.8 Such details are captured via responses from "primary owners" to the ABS, which excludes publicly traded firms, estates, trusts, government and tribal entities, associations, membership clubs, cooperatives and foreign entities. 9 Specifically, we recalculate the sample weights by stratifying the firms in the 2017 LBD and our final sample of firms in the ABS on firm size, age, and industry.…”
mentioning
confidence: 84%
“…Recent research into AI's potential impacts has relied on O*NET task descriptions (Brynjolfsson et al, 2018; Eloundou et al, 2023; Felten et al, 2021), online job descriptions (Acemoglu et al, 2022; Alekseeva et al, 2021; Babina et al, 2024; Goldfarb et al, 2023), or combining the latter with patents and/or research publications (Bessen et al, 2021; Webb, 2019). Direct firm‐level measures of AI use are rare, with exceptions in Europe, where samples are smaller (e.g., Czarnitzki et al, 2023; Hoffreumon et al, 2023). Studies of AI in other countries, such as Canada and China, have had to rely on yet different measurement approaches (Alexopoulos & Cohen, 2018; Beraja et al, 2023).…”
Section: Motivation and Prior Workmentioning
confidence: 99%
“…Where AI increases productivity, this should lead to more trade as firms are more competitive (Bailey et al ., 2023; Melitz & Redding, 2014). Indeed, it is already the case that firms most adept at using AI are more productive than non‐AI adopting firms (Czarnitzki et al ., 2023). AI could also lead to more product variety and trade (Trefler & Sun, 2023).…”
Section: Why Foundational Ai Mattersmentioning
confidence: 99%