Locating Risk: Task Designers and the Challenge of Risk Disclosure in RAI Content Work
Alice Qian, Ryland Shaw, Laura Dabbish, Jina Suh, Hong Shen

TL;DR
This paper investigates how task designers communicate well-being risks in responsible AI content tasks, highlighting gaps in current disclosure practices and emphasizing the need for better support and guidelines.
Contribution
It provides empirical insights from interviews with task designers on risk communication practices and identifies gaps in existing transparency frameworks.
Findings
Task designers often lack clear guidance on risk disclosure.
Current frameworks overlook well-being risk communication.
Improved support can enhance ethical AI development.
Abstract
As AI systems are increasingly tested and deployed in open-ended and high-stakes domains, crowdworkers are often tasked with responsible AI (RAI) content work. These tasks include labeling violent content, moderating disturbing text, or simulating harmful behavior for red teaming exercises to shape AI system behaviors. While prior research efforts have highlighted the risks to worker well-being associated with RAI content work, far less attention has been paid to how these risks are communicated to workers by task designers or individuals who design and post RAI tasks. Existing transparency frameworks and guidelines, such as model cards, datasheets, and crowdworksheets, focus on documenting model information and dataset collection processes, but they overlook an important aspect of disclosing well-being risks to workers. In the absence of standard workflows or clear guidance, the…
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