Tepper School of Business, Carnegie Mellon University, Pittsburgh, PA 15213
Proc Natl Acad Sci U S A. 2017 Nov 28;114(48):12720-12724. doi: 10.1073/pnas.1706597114. Epub 2017 Nov 13.
We propose a network-based method for measuring worker skills. We illustrate the method using data from an online freelance website. Using the tools of network analysis, we divide skills into endogenous categories based on their relationship with other skills in the market. Workers who specialize in these different areas earn dramatically different wages. We then show that, in this market, network-based measures of human capital provide additional insight into wages beyond traditional measures. In particular, we show that workers with diverse skills earn higher wages than those with more specialized skills. Moreover, we can distinguish between two different types of workers benefiting from skill diversity: jacks-of-all-trades, whose skills can be applied independently on a wide range of jobs, and synergistic workers, whose skills are useful in combination and fill a hole in the labor market. On average, workers whose skills are synergistic earn more than jacks-of-all-trades.
我们提出了一种基于网络的衡量工人技能的方法。我们使用来自一个在线自由职业网站的数据来说明这种方法。利用网络分析工具,我们根据技能与市场上其他技能的关系将技能划分为内生类别。专门从事这些不同领域的工人的工资差异巨大。然后,我们表明,在这个市场中,基于网络的人力资本衡量标准除了传统的衡量标准之外,还为工资提供了更多的见解。具体来说,我们表明,拥有多样化技能的工人比具有更专业化技能的工人获得更高的工资。此外,我们可以区分两种从技能多样性中受益的不同类型的工人:多面手,他们的技能可以独立应用于广泛的工作,以及协同工人,他们的技能结合起来很有用,可以填补劳动力市场的空白。平均而言,技能具有协同作用的工人比多面手挣得更多。