HCAILGMay 8, 2020

Reputation Agent: Prompting Fair Reviews in Gig Markets

arXiv:2005.06022v1
Originality Incremental advance
AI Analysis

This addresses the problem of unfair reviews for gig workers, which can lead to job loss, but it is incremental as it builds on existing transparency tools.

The study tackled unfair reviews in gig markets by introducing Reputation Agent, a tool that uses deep learning to detect unfair factors in reviews and prompts requesters to reconsider, resulting in more fair reviews across markets compared to traditional approaches.

Our study presents a new tool, Reputation Agent, to promote fairer reviews from requesters (employers or customers) on gig markets. Unfair reviews, created when requesters consider factors outside of a worker's control, are known to plague gig workers and can result in lost job opportunities and even termination from the marketplace. Our tool leverages machine learning to implement an intelligent interface that: (1) uses deep learning to automatically detect when an individual has included unfair factors into her review (factors outside the worker's control per the policies of the market); and (2) prompts the individual to reconsider her review if she has incorporated unfair factors. To study the effectiveness of Reputation Agent, we conducted a controlled experiment over different gig markets. Our experiment illustrates that across markets, Reputation Agent, in contrast with traditional approaches, motivates requesters to review gig workers' performance more fairly. We discuss how tools that bring more transparency to employers about the policies of a gig market can help build empathy thus resulting in reasoned discussions around potential injustices towards workers generated by these interfaces. Our vision is that with tools that promote truth and transparency we can bring fairer treatment to gig workers.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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