Alfaro-Serrano David, Balantrapu Tanay, Chaurey Ritam, Goicoechea Ana, Verhoogen Eric
Cornerstone Research New York New York USA.
World Bank Group Washington District of Columbia USA.
Campbell Syst Rev. 2021 Nov 3;17(4):e1181. doi: 10.1002/cl2.1181. eCollection 2021 Dec.
The adoption of improved technologies is generally associated with better economic performance and development. Despite its desirable effects, the process of technology adoption can be quite slow and market failures and other frictions may impede adoption. Interventions in market processes may be necessary to promote the adoption of beneficial technologies. This review systematically identifies and summarizes the evidence on the effects of interventions that shape the incentives of firms to adopt new technologies. Following Foster and Rosenzweig, is defined as "the relationship between inputs and outputs," and as "the use of new mappings between input and outputs and the corresponding allocations of inputs that exploit the new mappings." The review focuses on studies that include direct evidence on technology adoption, broadly defined, as an outcome. The term intervention refers broadly to sources of exogenous variation that shape firms' incentives to adopt new technologies, including public policies, interventions carried out by private institutions (such as NGOs), experimental manipulations implemented by academic researchers trying to understand technology adoption, and natural experiments.
The objective of this review is to answer the following research questions: 1.To what extent do interventions affect technology adoption in firms?2.To what extent does technology adoption affect profits, employment, productivity, and yields?3.Are these effects heterogeneous across sectors, firm size, countries, workers' skill level, or workers' gender?
To be included, papers had to meet the inclusion criteria described in detail in Section 3.1 which is grouped into four categories: (1) Participants, (2) Interventions, (3) Methodology, and (4) Outcomes.Regarding participants, our focus was on firms, and we omitted studies at the country or region level. In terms of interventions, we included studies that analyzed a source of exogenous variation in incentives for firms to adopt new technologies and estimated their effects. Thus, we left out studies that only looked at correlates of technology adoption, without a credible strategy to establish causality, and only included studies that used experimental or quasi-experimental methods. Regarding outcomes, papers were included only if they estimated effects of interventions (broadly defined) on technology adoption, although we also considered other firm outcomes as secondary outcomes in studies that reported them.
The first step in selecting the studies to be included in the systematic review was to identify a set of candidate papers. This set included both published and unpublished studies. To look for candidate papers, we implemented an electronic search and, in a subsequent step, a manual search.The electronic search involved running a keyword search on the most commonly used databases for published and unpublished academic studies in the broad topic area. The words and their Boolean combinations were carefully chosen (more details in Section 3.2). The selected papers were initially screened on title and abstract. If papers passed this screen, they were screened on full text. Those studies that met the stated criteria were then selected for analysis.The manual search component involved asking for references from experts and searching references cited by papers selected through the electronic search. These additional papers were screened based on title and abstract and the remaining were screened on full text. If they met the criteria they were added to the list of selected studies.
For the selected studies, the relevant estimates of effects and their associated standard errors (s) were entered into an Excel spreadsheet along with other related information such as sample size, variable type, and duration for flow variables. Other information such as authors, year of publication, and country and/or region where the study was implemented was also included in the spreadsheet.Once the data were entered for each of the selected studies, the information on sample size, effect size and of the effect size was used to compute the standardized effect size for each study to make the results comparable across studies. For those studies for which relevant data were not reported, we contacted the authors by email and incorporated the information they provided. Forest plots were then generated and within-study pooled average treatment effects were computed by outcome variable.In addition, an assessment of reporting on potential biases was conducted including (1) reporting on key aspects of selection bias and confounding, (2) reporting on spillovers of interventions to comparison groups, (3) reporting of s, and (4) reporting on Hawthorne effects and the collection of retrospective data.
The electronic and manual searches resulted in 42,462 candidate papers. Of these, 80 studies were ultimately selected for the review after screenings to apply the selection criteria. Relevant data were extracted for analysis from these 80 studies. Overall, 1108 regression coefficients across various interventions and outcomes were included in the analysis, representing a total of 4,762,755 firms. Even though the search methods included both high-income and developing countries, only 1 of the 80 studies included in the analysis was in a high-income country, while the remaining 79 were in developing countries.We discuss the results in two parts, looking at firms in manufacturing and services separately from firms (i.e., farms) in agriculture. In each case, we consider both technology adoption and other firm outcomes.
AUTHORS' CONCLUSIONS: Overall, our results suggest that some interventions led to positive impacts on technology adoption among firms across manufacturing, services, and agriculture sectors, but given the wide variation in the time periods, contexts, and study methodologies, the results are hard to generalize. The effects of these interventions on other firm performance measures such as farm yields, firm profits, productivity, and employment were mixed.Policy-makers must be careful in interpreting these results as a given intervention may not work equally well across contexts and may need to be adjusted to each specific regional context. There is great need for more research on the barriers to technology adoption by firms in developing countries and interventions that may help alleviate these obstacles. One major implication for researchers from our review is that there is a need to carefully measure technology adoption.
采用改进技术通常与更好的经济表现和发展相关。尽管有其理想效果,但技术采用过程可能相当缓慢,市场失灵和其他摩擦可能会阻碍采用。可能需要对市场过程进行干预,以促进有益技术的采用。本综述系统地识别并总结了有关影响企业采用新技术激励措施的干预效果的证据。按照福斯特和罗森茨威格的定义, 被定义为“投入与产出之间的关系”, 被定义为“使用投入与产出之间的新映射以及利用新映射的相应投入分配”。本综述重点关注那些包含广义上作为结果的技术采用直接证据的研究。术语干预广义上指塑造企业采用新技术激励措施的外生变化来源,包括公共政策、私人机构(如非政府组织)实施的干预、试图理解技术采用的学术研究人员进行的实验性操作以及自然实验。
本综述的目的是回答以下研究问题:1. 干预在多大程度上影响企业的技术采用?2. 技术采用在多大程度上影响利润、就业、生产率和产量?3. 这些影响在不同部门、企业规模、国家、工人技能水平或工人性别之间是否存在差异?
要被纳入,论文必须符合第3.1节详细描述的纳入标准,该标准分为四类:(1)参与者,(2)干预措施,(3)方法,(4)结果。关于参与者,我们关注的是企业,我们省略了国家或地区层面的研究。在干预措施方面,我们纳入了那些分析企业采用新技术激励措施中外生变化来源并估计其效果的研究。因此,我们排除了那些只研究技术采用的相关因素而没有建立因果关系的可靠策略的研究,只纳入了使用实验或准实验方法的研究。关于结果,只有当论文估计了干预措施(广义定义)对技术采用的影响时才会被纳入,不过在报告了其他企业结果的研究中,我们也将其视为次要结果。
选择纳入系统综述的研究的第一步是识别一组候选论文。这组论文包括已发表和未发表的研究。为了寻找候选论文,我们进行了电子搜索,随后还进行了手动搜索。电子搜索包括在广泛主题领域中已发表和未发表学术研究最常用的数据库上进行关键词搜索。仔细选择了关键词及其布尔组合(第3.2节有更多详细信息)。最初根据标题和摘要对所选论文进行筛选。如果论文通过此筛选,则对全文进行筛选。然后选择那些符合既定标准的研究进行分析。手动搜索部分包括向专家索要参考文献,并搜索通过电子搜索选择的论文所引用的参考文献。根据标题和摘要对这些额外的论文进行筛选,其余的则进行全文筛选。如果它们符合标准,则将其添加到所选研究列表中。
对于所选研究,将相关的效果估计值及其相关标准误差(s)以及其他相关信息(如样本大小、变量类型和流量变量的持续时间)输入到Excel电子表格中。电子表格中还包括其他信息,如作者、发表年份以及研究实施的国家和/或地区。一旦为每个所选研究输入了数据,就使用样本大小、效应大小和效应大小的 信息来计算每个研究的标准化效应大小,以使研究结果具有可比性。对于那些未报告相关数据的研究,我们通过电子邮件与作者联系,并纳入他们提供的信息。然后生成森林图,并按结果变量计算研究内的合并平均治疗效果。此外,还对潜在偏差的报告进行了评估,包括(1)选择偏差和混杂因素关键方面的报告,(2)干预措施对对照组溢出效应的报告,(3)标准误差的报告,以及(4)霍桑效应的报告和回顾性数据的收集。
电子搜索和手动搜索共得到42462篇候选论文。其中,经过筛选以应用选择标准后,最终有80项研究被选入综述。从这80项研究中提取了相关数据进行分析。总体而言,分析中纳入了各种干预措施和结果的1108个回归系数,代表总共4762755家企业。尽管搜索方法涵盖了高收入国家和发展中国家,但分析中纳入的80项研究中只有1项来自高收入国家,其余79项来自发展中国家。我们分两部分讨论结果,分别从制造业和服务业的企业与农业企业(即农场)的角度进行探讨。在每种情况下,我们都考虑技术采用和其他企业结果。
总体而言,我们的结果表明,一些干预措施对制造业、服务业和农业部门的企业技术采用产生了积极影响,但鉴于时间段、背景和研究方法的广泛差异,结果难以一概而论。这些干预措施对其他企业绩效指标(如农场产量、企业利润、生产率和就业)的影响喜忧参半。政策制定者在解释这些结果时必须谨慎,因为给定的干预措施在不同背景下可能效果不同,可能需要针对每个特定的区域背景进行调整。非常需要对发展中国家企业采用技术的障碍以及可能有助于减轻这些障碍的干预措施进行更多研究。我们的综述对研究人员的一个主要启示是,需要仔细衡量技术采用情况。