Comment

IF 7.5 1区 经济学 Q1 ECONOMICS
J. Haltiwanger
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引用次数: 0

Abstract

Understanding the determinants of innovation and productivity growth is a core open area of economics research. Although enormous progress has beenmade in theoretical models of innovation accompanied by an increasing use of firm-level data to quantify the nature of innovation and productivity, many challenges remain. A key challenge is that much of the research using firm-level data has focused on firms with observable measures of the inputs into innovation (e.g., research and development [R&D] expenditures) and direct measures of the success of innovations (e.g., patents). This approach focuses on a relativelynarrow subset offirms and sectors where such observables are relevant. Most firms do not report R&D expenditures or patents. It is implausible that only the firms with these observable measures of innovation are responsible for the observed fluctuations in productivity growth from innovation. As evidence of this, a National Academy of Sciences report (Brown et al. 2005) highlighting the limitations of R&Ddata reported that one of themost innovative firms in retail trade, Walmart, reports no R&D expenditures in its 10-K reports. This paper takes an indirect approach to identifying innovation activity that overcomes these limitations. Using an innovative growth accounting framework that is motivated by a quality laddermodel of innovation, this paper uses data on the employment growth rate distribution for the universe of private sector, nonfarm (hereafter private sector for short) establishments to quantify the contribution of creative destruction (CD), own innovation, and new varieties. The authors accomplish this important objective by using the Longitudinal Business Database (LBD) that tracks the employment dynamics, including entry and exit,firm size, andfirmage of
评论
理解创新和生产力增长的决定因素是经济学研究的一个核心开放领域。尽管随着越来越多地使用企业层面的数据来量化创新和生产力的性质,创新的理论模型取得了巨大进展,但仍存在许多挑战。一个关键的挑战是,许多使用企业层面数据的研究都集中在对创新投入(例如,研发支出)有可观察指标和对创新成功(例如,专利)有直接指标的企业上。这种方法关注的是一个相对较低的子组的形式和扇区,这些可观测性是相关的。大多数公司不报告研发支出或专利。令人难以置信的是,只有具有这些可观察到的创新指标的公司才能对创新导致的生产率增长波动负责。作为证据,美国国家科学院的一份报告(Brown等人,2005)强调了研发数据的局限性,报告称零售业最具创新性的公司之一沃尔玛在其10-K报告中没有报告研发支出。本文采用了一种间接的方法来识别克服这些限制的创新活动。本文使用由创新质量阶梯模型驱动的创新增长会计框架,使用私营部门、非农(以下简称私营部门)机构的就业增长率分布数据来量化创造性破坏(CD)、自主创新和新品种的贡献。作者通过使用纵向商业数据库(LBD)来实现这一重要目标,该数据库跟踪就业动态,包括进入和退出、公司规模和公司年龄
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来源期刊
CiteScore
5.10
自引率
0.00%
发文量
23
期刊介绍: The Nber Macroeconomics Annual provides a forum for important debates in contemporary macroeconomics and major developments in the theory of macroeconomic analysis and policy that include leading economists from a variety of fields.
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