Crowdsourcing is a new mode of value creation in which organizations leverage numerous Internet users to accomplish tasks. However, because these workers have different backgrounds and intentions, crowdsourcing suffers from quality concerns. In the literature, tracing the behavior of workers is preferred over other methodologies such as consensus methods and gold standard approaches. This paper proposes two novel models based on workers’ behavior for task classification. These models newly benefit from time-series features and characteristics. The first model uses multiple time-series features with a machine learning classifier. The second model converts time series into images using the recurrent characteristic and applies a convolutional ...
Abstract Matching crowd workers to suitable tasks is highly desirable as it can enhance task perfor...
Complexity is crucial to characterize tasks performed by humans through computer systems. Yet, the t...
Is it possible to teach workers while crowdsourcing classification tasks? Amongst the challenges: (a...
While crowdsourcing offers potential traction on data collection at scale, it also poses new and sig...
The suitability of crowdsourcing to solve a variety of problems has been investigated widely. Yet, t...
While temporal behavioral patterns can be discerned to un-derlie real crowd work, prior studies have...
General tasks on crowdsourcing platforms attract more and more workers with different skills and exp...
Abstract—Assigning heterogeneous tasks to workers is an important challenge of crowdsourcing platfor...
International audienceIn the last decade, crowdsourcing (CS) has emergedas a very promising approach...
While crowd workers typically complete a variety of tasks in crowdsourcing platforms, there is no wi...
Models for aggregating contributions by crowd workers have been shown to be challenged by the rise o...
Crowdsourcing services like Amazon’s Mechan-ical Turk have facilitated and greatly expedited the man...
Thesis (Ph.D.)--University of Washington, 2017-08Artificial intelligence and machine learning power ...
We present studies of the attention and time, or engagement, invested by crowd workers on tasks. Co...
We present a clustered personal classifier method (CPC method) that jointly estimates a classifier a...
Abstract Matching crowd workers to suitable tasks is highly desirable as it can enhance task perfor...
Complexity is crucial to characterize tasks performed by humans through computer systems. Yet, the t...
Is it possible to teach workers while crowdsourcing classification tasks? Amongst the challenges: (a...
While crowdsourcing offers potential traction on data collection at scale, it also poses new and sig...
The suitability of crowdsourcing to solve a variety of problems has been investigated widely. Yet, t...
While temporal behavioral patterns can be discerned to un-derlie real crowd work, prior studies have...
General tasks on crowdsourcing platforms attract more and more workers with different skills and exp...
Abstract—Assigning heterogeneous tasks to workers is an important challenge of crowdsourcing platfor...
International audienceIn the last decade, crowdsourcing (CS) has emergedas a very promising approach...
While crowd workers typically complete a variety of tasks in crowdsourcing platforms, there is no wi...
Models for aggregating contributions by crowd workers have been shown to be challenged by the rise o...
Crowdsourcing services like Amazon’s Mechan-ical Turk have facilitated and greatly expedited the man...
Thesis (Ph.D.)--University of Washington, 2017-08Artificial intelligence and machine learning power ...
We present studies of the attention and time, or engagement, invested by crowd workers on tasks. Co...
We present a clustered personal classifier method (CPC method) that jointly estimates a classifier a...
Abstract Matching crowd workers to suitable tasks is highly desirable as it can enhance task perfor...
Complexity is crucial to characterize tasks performed by humans through computer systems. Yet, the t...
Is it possible to teach workers while crowdsourcing classification tasks? Amongst the challenges: (a...