Waters Keith, Shutters Shade T
School of Complex Adaptive Systems, Arizona State University, Washington, DC USA.
Schar School of Policy and Government, George Mason University, Arlington, VA USA.
Appl Netw Sci. 2022;7(1):43. doi: 10.1007/s41109-022-00487-7. Epub 2022 Jun 28.
An issue often confronting economic development agencies is how to minimize unemployment due to disruptions like technological change, trade wars, recessions, or other economic shocks. Decision makers are left to craft policies that can absorb surplus labor with as little pain to workers as possible. The questions they face include how to re-employ displaced workers and how to fill labor shortages. To address such questions, we quantify the proximity of any two occupations based on the skills inherent in each. Taking labor skills as nodes, we model US labor as a weighted network of interdependent skills, deriving link values from geographical patterns of skill co-occurrence. We use this network to locate occupations, measure their proximity to each other, and identify which missing skills may inhibit workers from easily transitioning from one occupation to another. Thus, given that an occupation is a bundle of skills, we use our skills network to help policy makers identify which other occupations are most proximate a worker's current occupation. Finally, we apply our method to assess various worker retraining pathways for metropolitan Washington, DC, USA, whose economy was simultaneously disrupted by both the COVID-19 pandemic and the arrival of a second headquarters for Amazon.
The online version contains supplementary material available at 10.1007/s41109-022-00487-7.
经济发展机构经常面临的一个问题是,如何将因技术变革、贸易战、衰退或其他经济冲击等干扰因素导致的失业降至最低。决策者需要制定政策,尽可能减少对工人造成的痛苦,同时吸纳过剩劳动力。他们面临的问题包括如何重新安置被取代的工人以及如何填补劳动力短缺。为了解决这些问题,我们根据每个职业所固有的技能来量化任意两个职业之间的接近程度。以劳动技能为节点,我们将美国劳动力建模为一个相互依赖技能的加权网络,从技能共现的地理模式中得出链接值。我们利用这个网络来定位职业,衡量它们彼此之间的接近程度,并确定哪些缺失的技能可能会阻碍工人轻松地从一个职业过渡到另一个职业。因此,鉴于一个职业是一组技能,我们利用我们的技能网络来帮助政策制定者确定哪些其他职业与工人目前的职业最接近。最后,我们应用我们的方法来评估美国华盛顿特区大都市地区各种工人再培训途径,该地区的经济同时受到新冠疫情和亚马逊第二总部入驻的干扰。
在线版本包含可在10.1007/s41109-022-00487-7获取的补充材料。