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算法时代零工工作者的投入与倦怠:数字劳动平台的实证研究

Investigating engagement and burnout of gig-workers in the age of algorithms: an empirical study in digital labor platforms

Information Technology and People · 2024
被引 51 · 同刊同年前 2%
ABS 3

中文导读

基于工作要求-资源模型,研究了数字劳动平台中算法管理对零工工作者工作投入和倦怠的影响,发现算法薪酬、工作自主性和信息共享提升投入,而工作不安全感、不支持性算法互动和算法不公导致倦怠。

Abstract

Purpose Digital labor platforms (DLPs) are transforming the nature of the work for an increasing number of workers, especially through extensively employing automated algorithms for performing managerial functions. In this novel working setting – characterized by algorithmic governance, and automatic matching, rewarding and punishing mechanisms – gig-workers play an essential role in providing on-demand services for final customers. Since gig-workers’ continued participation is crucial for sustainable service delivery in platform contexts, this study aims to identify and examine the antecedents of their working outcomes, including burnout and engagement. Design/methodology/approach We suggested a theoretical framework, grounded in the job demands-resources heuristic model to investigate how the interplay of job demands and resources, resulting from working in DLPs, explains gig-workers’ engagement and burnout. We further empirically tested the proposed model to understand how DLPs' working conditions, in particular their algorithmic management, impact gig-working outcomes. Findings Our findings indicate that job resources – algorithmic compensation, work autonomy and information sharing– have significant positive effects on gig-workers’ engagement. Furthermore, our results demonstrate that job insecurity, unsupportive algorithmic interaction (UAI) and algorithmic injustice significantly contribute to gig-workers’ burnout. Notably, we found that job resources substantially, but differently, moderate the relationship between job demands and gig-workers’ burnout. Originality/value This study contributes a theoretically accurate and empirically grounded understanding of two clusters of conditions – job demands and resources– as a result of algorithmic management practice in DLPs. We developed nuanced insights into how such conditions are evaluated by gig-workers and shape their engagement or burnout in DLP emerging work settings. We further uncovered that in gig-working context, resources do not similarly buffer against the negative effects of job demands.

数字劳动平台零工经济算法管理工作投入工作倦怠