A Glimpse Far into the Future: Understanding Long-term Crowd Worker Quality
September 15, 2016 Β· Declared Dead Β· π Conference on Computer Supported Cooperative Work
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Authors
Kenji Hata, Ranjay Krishna, Li Fei-Fei, Michael S. Bernstein
arXiv ID
1609.04855
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.CV
Citations
45
Venue
Conference on Computer Supported Cooperative Work
Last Checked
3 months ago
Abstract
Microtask crowdsourcing is increasingly critical to the creation of extremely large datasets. As a result, crowd workers spend weeks or months repeating the exact same tasks, making it necessary to understand their behavior over these long periods of time. We utilize three large, longitudinal datasets of nine million annotations collected from Amazon Mechanical Turk to examine claims that workers fatigue or satisfice over these long periods, producing lower quality work. We find that, contrary to these claims, workers are extremely stable in their quality over the entire period. To understand whether workers set their quality based on the task's requirements for acceptance, we then perform an experiment where we vary the required quality for a large crowdsourcing task. Workers did not adjust their quality based on the acceptance threshold: workers who were above the threshold continued working at their usual quality level, and workers below the threshold self-selected themselves out of the task. Capitalizing on this consistency, we demonstrate that it is possible to predict workers' long-term quality using just a glimpse of their quality on the first five tasks.
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