利用人工智能缓解员工分类不当问题

IF 1.5 4区 社会学 Q1 LAW Modern Law Review Pub Date : 2024-09-15 DOI:10.1111/1468-2230.12919
Guy Davidov
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引用次数: 0

摘要

将雇员错误归类为独立承包商的现象十分普遍。本文旨在做出两个贡献。我认为,三个众所周知的问题--雇员身份测试的不确定性、自我执法的障碍以及谈判能力的不平等--共同赋予了雇主设定默认法律地位的实际权力。让工人承担启动法律程序、质疑自己被归类为独立承包商的责任,是错误归类持续存在的最终原因。第二个也是最主要的贡献是提出了一个依赖于新人工智能能力的解决方案。由于技术的进步,现在可以要求雇主在以独立承包商的身份与他人接触之前寻求预先授权。该授权将由国家管理的自动系统根据人工智能对法律的预测予以批准(或拒绝)。双方仍可向法院提起诉讼,但雇主将被剥夺设定默认法律地位的权力。文章考虑了依赖人工智能预测的困难,认为这些困难是可以解决的,并提出了一种可以证明合理的模式。
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Using AI to Mitigate the Employee Misclassification Problem
Misclassification of employees as independent contractors is widespread. This article aims to make two contributions. My first goal is to sharpen the explanation of why misclassifications persist; I argue that three well‐known problems – the indeterminacy of employee status tests, the barriers to self‐enforcement, and the inequality of bargaining power – together combine to give employers de facto power to set the default legal status. Putting the burden on the worker to initiate legal proceedings and challenge their classification as an independent contractor is the ultimate reason for persistent misclassifications. The second and main contribution is to propose a solution that relies on new AI capabilities. Thanks to technological advancements it is now possible to require employers to seek pre‐authorisation before engaging with someone as an independent contractor. The authorisation would be granted (or refused) by a state‐run automated system, based on an AI prediction about the law. Both parties would still be able to bring the case before a court of law; but the power to set the default legal status would be taken away from employers. The article considers the difficulties with relying on AI predictions, and argues that those difficulties can be addressed, proposing a model that can be justified.
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来源期刊
CiteScore
2.10
自引率
0.00%
发文量
61
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