了解大流行病中印度城市劳动力市场的动态:采用监督学习方法的研究

IF 0.7 Q3 ECONOMICS
Namrata Singha Roy, Niladri Ghosh
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引用次数: 0

摘要

本研究深入探讨了印度劳动力市场的动态就业阶梯和挑战,尤其是在面临外部冲击时。它以 COVID-19 大流行期间的印度城市劳动力市场为重点,研究了 "就业者"、"失业者 "和 "非劳动力 "之间工作转换的流动性。利用 2020-21 年定期劳动力调查的数据,创建了一个纵向面板数据集,对个人进行四个季度的跟踪,从而能够监测他们的活动状态。研究采用 K-近邻分类法,确定了劳动力市场参与的脆弱性。研究还进一步探讨了劳动力市场参与三种状态之间转变的驱动因素,并使用多叉逻辑模型对选择偏差进行了调整。研究揭示了劳动力内部的显著流动,以及就业状态之间的明显转变。即使是那些目前在职的人也往往很脆弱,随时都有脱离劳动力队伍的风险。妇女受到的影响尤为严重,有证据表明,由于认为工作稀缺或没有体面的工作,许多妇女停止了求职,从而产生了 "灰心工人 "效应。这项研究引起了人们对自营职业的可持续性和固定工作的安全性的担忧。这些发现揭示了因大流行病而加剧的持久结构性挑战,呼吁采取紧急行动,解决普遍失业、女性参与率低以及劳动力市场普遍不平等的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Understanding Labor Market Dynamics in Urban India Amidst the Pandemic: A Study Employing Supervised Learning Methods

Understanding Labor Market Dynamics in Urban India Amidst the Pandemic: A Study Employing Supervised Learning Methods

This study provides insights into the dynamic job ladder and challenges in the Indian labor market, particularly when facing external shock. It examines the fluidity of job transitions among the ‘employed’, ‘unemployed’, and those ‘not in the laborforce’, focusing on the urban labor market of India during the COVID-19 pandemic. Using data from the 2020-21 Periodic Labour Force Survey, a longitudinal panel dataset was created to track individuals across four quarters, enabling the monitoring of their activity status. Employing K-Nearest Neighbour classification, the study identifies vulnerabilities in labor market engagement. It further explores factors driving transitions among the three states of labor market involvement, using a multinomial logistic model adjusted for selection bias. The research reveals significant movement within the labor force, with notable shifts between employment statuses. Even those currently employed are often vulnerable, at risk of detachment from the labor force at any time. Women were disproportionately affected, with evidence of discouraged worker effect, as many ceased jobs search duo to perceived job scarcity or unavailability of decent jobs. The study raised concerns about the sustainability of self-employment and the security of regular jobs. These findings expose enduring structural challenges exacerbated by the pandemic, calling for urgent action to address widespread unemployment, low female participation, and prevailing inequalities in the labor market.

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来源期刊
CiteScore
1.10
自引率
0.00%
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0
期刊介绍: The Journal of Quantitative Economics (JQEC) is a refereed journal of the Indian Econometric Society (TIES). It solicits quantitative papers with basic or applied research orientation in all sub-fields of Economics that employ rigorous theoretical, empirical and experimental methods. The Journal also encourages Short Papers and Review Articles. Innovative and fundamental papers that focus on various facets of Economics of the Emerging Market and Developing Economies are particularly welcome. With the help of an international Editorial board and carefully selected referees, it aims to minimize the time taken to complete the review process while preserving the quality of the articles published.
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