论文标题
是否自动化?使用图神经网络对职业的风险识别
Being Automated or Not? Risk Identification of Occupations with Graph Neural Networks
论文作者
论文摘要
自动化技术(例如人工智能(AI)和机器人技术)的快速进步构成了越来越多的职业自动化风险,可能会对劳动力市场产生重大影响。最近的社会经济研究表明,接下来的十年中,将近50%的职业处于自动化的高风险。但是,缺乏颗粒状数据和经验知情的模型限制了这些研究的准确性,并使预测哪些工作将是自动化的。在本文中,我们通过在自动化和非自动化职业之间执行分类任务来研究职业的自动化风险。可用信息是由标准职业分类(SOC)分类的910个职业的任务声明,技能和互动。为了充分利用此信息,我们提出了一种基于图的半监视分类方法,名为\ textbf {a} Utomated \ textbf {o} ccupation \ textbf {c}基于\ textbf {g} rassification lassification lassification lassification (\ textbf {aoc-gcn})确定职业的自动风险。该模型集成了一个异构图,以捕获职业的本地和全局上下文。结果表明,我们提出的方法通过考虑职业的内部特征及其外部互动的信息来优于基线模型。这项研究可以帮助决策者在进入就业市场之前确定潜在的自动化职业并支持个人的决策。
The rapid advances in automation technologies, such as artificial intelligence (AI) and robotics, pose an increasing risk of automation for occupations, with a likely significant impact on the labour market. Recent social-economic studies suggest that nearly 50\% of occupations are at high risk of being automated in the next decade. However, the lack of granular data and empirically informed models have limited the accuracy of these studies and made it challenging to predict which jobs will be automated. In this paper, we study the automation risk of occupations by performing a classification task between automated and non-automated occupations. The available information is 910 occupations' task statements, skills and interactions categorised by Standard Occupational Classification (SOC). To fully utilize this information, we propose a graph-based semi-supervised classification method named \textbf{A}utomated \textbf{O}ccupation \textbf{C}lassification based on \textbf{G}raph \textbf{C}onvolutional \textbf{N}etworks (\textbf{AOC-GCN}) to identify the automated risk for occupations. This model integrates a heterogeneous graph to capture occupations' local and global contexts. The results show that our proposed method outperforms the baseline models by considering the information of both internal features of occupations and their external interactions. This study could help policymakers identify potential automated occupations and support individuals' decision-making before entering the job market.