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arxiv: 1702.03488 · v2 · pith:UPDWCXL7new · submitted 2017-02-12 · 💻 cs.AI · cs.HC· cs.MA

Octopus: A Framework for Cost-Quality-Time Optimization in Crowdsourcing

classification 💻 cs.AI cs.HCcs.MA
keywords octopustaskthreecontrollingoptimizationqualitysettingability
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We present Octopus, an AI agent to jointly balance three conflicting task objectives on a micro-crowdsourcing marketplace - the quality of work, total cost incurred, and time to completion. Previous control agents have mostly focused on cost-quality, or cost-time tradeoffs, but not on directly controlling all three in concert. A naive formulation of three-objective optimization is intractable; Octopus takes a hierarchical POMDP approach, with three different components responsible for setting the pay per task, selecting the next task, and controlling task-level quality. We demonstrate that Octopus significantly outperforms existing state-of-the-art approaches on real experiments. We also deploy Octopus on Amazon Mechanical Turk, showing its ability to manage tasks in a real-world dynamic setting.

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