雇主学习、生产力和收入分配:来自绩效测量的证据

Lisa B. Kahn, Fabian Lange
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引用次数: 124

摘要

工资分配中两个普遍存在的经验规律是,工资的方差随着经验的增加而增加,工资剩余的创新具有很大的、不可预测的成分。对这些模式的主要解释是,随着时间的推移,要么企业了解了工人的生产率,但生产率保持不变,要么工人的生产率本身也在异质发展。在本文中,我们试图理清这两种模式,并对它们的相对重要性进行量化。我们推导了一个学习和生产力的动态模型,该模型嵌套了两个模型并允许它们共存。我们根据一家大型公司20年的薪酬和绩效指标(Baker-Gibbs-Holmstrom数据)来估算我们的模型。将绩效衡量纳入其中产生了两个关键创新。首先,面板结构意味着我们有重复的生产力相关措施,而不是雇主学习的经验证据,使用一个固定的措施。其次,我们可以将生产率与薪酬分开,而之前关于生产率进化的文献却不能。我们发现这两个模型在解释数据时都很重要。然而,主要的影响是工人的生产力随着时间的推移而发生特殊的变化,这意味着企业必须不断地了解一个移动的目标。因此,虽然大多数薪酬差异是由个人生产率的变化驱动的,但由于信息不完全,在所有经验水平上,工资与个人生产率存在显著差异。我们认为这代表了对雇主学习实证文献的重要重新解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Employer Learning, Productivity and the Earnings Distribution: Evidence from Performance Measures
Two ubiquitous empirical regularities in pay distributions are that the variance of wages increases with experience, and innovations in wage residuals have a large, unpredictable component. The leading explanations for these patterns are that over time, either firms learn about worker productivity but productivity remains fixed or workers' productivities themselves evolve heterogeneously. In this paper, we seek to disentangle these two models and place magnitudes on their relative importance. We derive a dynamic model of learning and productivity that nests both models and allows them to coexist. We estimate our model on a 20-year panel of pay and performance measures from a single, large firm (the Baker-Gibbs-Holmstrom data). Incorporating performance measures yields two key innovations. First, the panel structure implies that we have repeat measures of correlates of productivity, as opposed to the empirical evidence on employer learning which uses one fixed measure. Second, we can separate productivity from pay, whereas the previous literature on productivity evolution could not. We find that both models are important in explaining the data. However, the predominant effect is that worker productivity evolves idiosyncratically over time, implying firms must continuously learn about a moving target. Therefore, while the majority of pay dispersion is driven by variation in individual productivity, wages differ significantly from individual productivity at all experience levels due to imperfect information. We believe this represents a significant reinterpretation of the empirical literature on employer learning.
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