制造 "好坏 "工作:算法管理如何通过不断的限制性选择制造同意

IF 8.3 1区 管理学 Q1 BUSINESS
Lindsey D. Cameron
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引用次数: 0

摘要

本研究探讨了一种新的生产关系--从人类管理者向数字平台上的算法管理者的转变--如何制造工作场所的同意。虽然大多数研究都认为,伴随算法管理而来的任务标准化和监控将导致典型的 "糟糕工作"(Kalleberg, Reskin, and Hudson, 2000; Kalleberg, 2011),但我发现,令人惊讶的是,许多工人表示喜欢在算法管理下工作,并找到了选择。通过对 "打工经济 "中最大的行业--叫车行业--长达七年的定性研究,我描述了工人是如何在算法管理下工作的。我首先展示了算法是如何在人机交互的多个场所对工作进行细分的,以及这种工作流程配置是如何允许更频繁、更狭窄的选择的。我发现工人们使用了两套策略。在参与策略中,个人通常会听从算法的提示,而不会试图绕过系统;在偏离策略中,个人会操纵自己对算法管理系统的输入。虽然与这些策略相关的行为实际上是对立的,但它们都会引起工人的同意,或者说积极、热情的参与,使他们的努力与管理者的利益相一致,而且都有助于工人将自己视为有技能的代理人。然而,这种基于选择的同意可能会掩盖工作中更多的结构性问题,从而导致我所说的 "好坏 "工作越来越受欢迎。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Making of the “Good Bad” Job: How Algorithmic Management Manufactures Consent Through Constant and Confined Choices
This research explores how a new relation of production—the shift from human managers to algorithmic managers on digital platforms—manufactures workplace consent. While most research has argued that the task standardization and surveillance that accompany algorithmic management will give rise to the quintessential “bad job” (Kalleberg, Reskin, and Hudson, 2000; Kalleberg, 2011), I find that, surprisingly, many workers report liking and finding choice while working under algorithmic management. Drawing on a seven-year qualitative study of the largest sector in the gig economy, the ride-hailing industry, I describe how workers navigate being managed by an algorithm. I begin by showing how algorithms segment the work at multiple sites of human–algorithm interactions and how this configuration of the work process allows for more-frequent and narrow choice. I find that workers use two sets of tactics. In engagement tactics, individuals generally follow the algorithmic nudges and do not try to get around the system; in deviance tactics, individuals manipulate their input into the algorithmic management system. While the behaviors associated with these tactics are practical opposites, they both elicit consent, or active, enthusiastic participation by workers to align their efforts with managerial interests, and both contribute to workers seeing themselves as skillful agents. However, this choice-based consent can mask the more-structurally problematic elements of the work, contributing to the growing popularity of what I call the “good bad” job.
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来源期刊
CiteScore
20.50
自引率
3.80%
发文量
49
期刊介绍: Administrative Science Quarterly, under the ownership and management of the Samuel Curtis Johnson Graduate School of Management at Cornell University, has consistently been a pioneer in organizational studies since the inception of the field. As a premier journal, it consistently features the finest theoretical and empirical papers derived from dissertations, along with the latest contributions from well-established scholars. Additionally, the journal showcases interdisciplinary work in organizational theory and offers insightful book reviews.
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