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Efficient crowdsourcing of crowd-generated microtasks.

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Crowdsourcing microtasks can be improved with cost forecasting, a method that helps manage growing task sets efficiently. This approach balances resources by predicting task costs, enhancing accuracy and leveraging collective intelligence for machine learning and content platforms.

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Area of Science:

  • Computer Science
  • Human-Computer Interaction
  • Artificial Intelligence

Background:

  • Crowdsourcing microtasks combines efficiency with human creativity.
  • Growing task sets in crowdsourcing can overwhelm resources.
  • Existing algorithms often require a fixed task set size.

Purpose of the Study:

  • Introduce cost forecasting for efficient crowdsourcing with dynamic task sets.
  • Enable crowdsourcers to balance resource allocation between new and existing tasks.
  • Improve accuracy and efficiency in crowdsourcing novel microtasks.

Main Methods:

  • Developed a cost forecasting approach for microtask proposal systems.
  • Implemented a decision mechanism based on predicted costs of new versus existing tasks.
  • Conducted experiments using real and synthetic crowdsourcing data.

Main Results:

  • Cost forecasting demonstrated improved accuracy in microtask completion.
  • The method efficiently balances crowdsourcer resources as the task set grows.
  • Achieved accuracy and efficiency gains for crowd-generated microtasks.

Conclusions:

  • Cost forecasting is a viable strategy for managing dynamic crowdsourcing environments.
  • This approach enhances the utility of collective intelligence for various applications.
  • Potential applications include improving machine learning datasets and content platforms.