Methodological issues related to the use of online labour market data

B. Fabo, L. Kureková
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引用次数: 2

Abstract

This report provides a mapping of existing research that employs online labour market data, covering both online job vacancies (demand side) and online applicant data (CVs) (supply side). We discuss and assess a variety of tools and empirical methods that have been used to address specific disadvantages of this data, such as non-representativeness or fluctuations in data quantity and structure; these may be due to external shocks, such as the COVID-19 pandemic. We find that while this research field has expanded rapidly, including with respect to geographical coverage, many empirical studies do not engage with the methodological aspects and weaknesses of online labour market data and take them at face value. We highlight that there are legitimate research approaches, which are inductive in nature, focused on discovering patterns and trends in underlying data. These are by definition less concerned with generalizability of findings, as they have different objectives. For this body of research, online labour market data open new avenues for understanding developments in labour markets. We also argue that biases in online labour market data emerge due to multiple factors. With respect to the order of discrepancies between online labour market data and representative data sources, these are typically not paramount. Different techniques have been adopted to deal with the non-representativeness problem, such as statistical techniques; adapting the research questions and research focus to the quality of data; and use of mixed methods, including qualitative methods, to increase the robustness of results.
与使用在线劳动力市场数据有关的方法问题
这份报告提供了一份利用在线劳动力市场数据的现有研究的地图,涵盖了在线职位空缺(需求方)和在线申请人数据(简历)(供应方)。我们讨论和评估了各种工具和经验方法,这些工具和经验方法已用于解决该数据的具体缺点,例如数据数量和结构的非代表性或波动;这可能是由于外部冲击,如COVID-19大流行。我们发现,虽然这一研究领域迅速扩大,包括在地理覆盖方面,但许多实证研究并未涉及在线劳动力市场数据的方法方面和弱点,并将其视为表面价值。我们强调有一些合法的研究方法,它们本质上是归纳的,专注于发现底层数据中的模式和趋势。从定义上讲,它们不太关注研究结果的普遍性,因为它们有不同的目标。对于这一研究领域,在线劳动力市场数据为理解劳动力市场的发展开辟了新的途径。我们还认为,在线劳动力市场数据中的偏见是由多种因素造成的。关于在线劳动力市场数据与代表性数据源之间的差异顺序,这些通常不是最重要的。人们采用了不同的技术来处理非代表性问题,如统计技术;使研究问题和研究重点与数据质量相适应;并采用混合方法,包括定性方法,以增加结果的稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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