劳动力市场中的性别流动性与基于技能的匹配模型

Ajaya Adhikari, Steven Vethman, Daan Vos, Marc Lenz, Ioana Cocu, Ioannis Tolios, Cor J. Veenman
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引用次数: 0

摘要

以技能为基础的匹配可以使工人在劳动力市场的不同部门和职业之间流动。在这种情况下,求职者可以寻找他们还没有工作经验,但拥有相关技能的工作。目前,有多种职业的性别分布存在偏差。就技能配对而言,目前还不清楚性别分布的变化(我们称之为性别流动)是否会产生影响以及如何产生影响。预计基于技能的匹配方法很可能是数据驱动的,包括计算语言模型和监督学习方法。这项工作首先显示了基于语言模型的职业技能表征中存在性别隔离。其次,我们以模拟数据为基础,评估了这些表征在潜在应用中的使用情况,并表明性别隔离会通过各种数据驱动的技能匹配模型传播。这些模型基于不同的语言表征(词包、word2vec 和 BERT)和距离度量(静态和基于机器学习)。因此,我们展示了如何评估和比较基于技能的匹配方法的匹配性能以及性别隔离风险。使模型的性别隔离偏差更加明确,有助于在实践中使用这些模型时产生健康的信任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Gender mobility in the labor market with skills-based matching models

Gender mobility in the labor market with skills-based matching models

Skills-based matching promises mobility of workers between different sectors and occupations in the labor market. In this case, job seekers can look for jobs they do not yet have experience in, but for which they do have relevant skills. Currently, there are multiple occupations with a skewed gender distribution. For skills-based matching, it is unclear if and how a shift in the gender distribution, which we call gender mobility, between occupations will be effected. It is expected that the skills-based matching approach will likely be data-driven, including computational language models and supervised learning methods. This work, first, shows the presence of gender segregation in language model-based skills representation of occupations. Second, we assess the use of these representations in a potential application based on simulated data, and show that the gender segregation is propagated by various data-driven skills-based matching models. These models are based on different language representations (bag of words, word2vec, and BERT), and distance metrics (static and machine learning-based). Accordingly, we show how skills-based matching approaches can be evaluated and compared on matching performance as well as on the risk of gender segregation. Making the gender segregation bias of models more explicit can help in generating healthy trust in the use of these models in practice.

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