Job security can never be taken for granted, especially in times of rapid, widespread and unexpected social and economic change. These changes can force workers to transition to new jobs. This may be because new technologies emerge or production is moved abroad. Perhaps it is a global crisis, such as COVID-19, which shutters industries and displaces labor en masse. Regardless of the impetus, people are faced with the challenge of moving between jobs to find new work. Successful transitions typically occur when workers leverage their existing skills in the new occupation. Here, we propose a novel method to measure the similarity between occupations using their underlying skills. We then build a recommender system for identifying optimal transition pathways between occupations using job advertisements (ads) data and a longitudinal household survey. Our results show that not only can we accurately predict occupational transitions (Accuracy = 76%), but we account for the asymmetric difficulties of moving between jobs (it is easier to move in one direction than the other). We also build an early warning indicator for new technology adoption (showcasing Artificial Intelligence), a major driver of rising job transitions. By using real-time data, our systems can respond to labor demand shifts as they occur (such as those caused by COVID-19). They can be leveraged by policy-makers, educators, and job seekers who are forced to confront the often distressing challenges of finding new jobs.
翻译:工作保障永远不能被视为理所当然,特别是在快速、广泛和意外的社会和经济变化时期。这些变化可能迫使工人转向新的工作岗位。这可能是因为新技术的出现或生产被转移到国外。也许这是一个全球性危机,如COVID-19,它堵塞行业,大规模取代劳动力。不管这种动力如何,人们都面临着在工作之间移动以寻找新工作的挑战。成功过渡通常发生在工人在新的职业中利用现有技能时。我们在这里提出一种新的方法,用他们的基本技能来衡量职业之间的相似性。我们然后建立一个建议者系统,利用招聘广告(ads)数据和长期家庭调查来确定职业之间的最佳过渡途径。我们的结果表明,我们不仅能够准确预测职业过渡(Acureaty = 76 % ), 而且我们考虑到工作之间移动的不对称困难(向另一个方向移动更容易)。我们还为新技术的采用(展示人工智能智能智能)建立了一个预警指标,这是他们不断提升工作转变的主要驱动因素。通过使用实时数据,我们的系统能够准确预测职业过渡(Acurity),我们往往能够将工作转向那些企业需求作为投资者。