DocumentCode
3723244
Title
Self-Generating a Labor Force for Crowdsourcing: Is Worker Confidence a Predictor of Quality?
Author
Julian Jarrett;Larissa Ferreira da Silva;Laerte Mello;Sadallo Andere;Gustavo Cruz;M. Brian Blake
Author_Institution
Dept. of Comput. Sci., Univ. of Miami, Miami, FL, USA
fYear
2015
Firstpage
85
Lastpage
90
Abstract
When leveraging the crowd to perform complex tasks, it is imperative to identify the most effective worker for a particular job. Demographic profiles provided by workers, skill self-assessments by workers, and past performance as captured by employers all represent viable data points available within labor markets. Employers often question the validity of a worker´s self-assessment of skills and expertise level when selecting workers in context of other information. More specifically, employers would like to answer the question, "Is worker confidence a predictor of quality?" In this paper, we discuss the state-of-the-art in recommending crowd workers based on assessment information. A major contribution of our work is an architecture, platform, and push/pull process for categorizing and recommending workers based on available self-assessment information. We present a study exploring the validity of skills input by workers in light of their actual performance and other metrics captured by employers. A further contribution of this approach is the extrapolation of a body of workers to describe the nature of the community more broadly. Through experimentation, within the language-processing domain, we demonstrate a new capability of deriving trends that might help future employers to select appropriate workers.
Keywords
"Crowdsourcing","Recruitment","Force","Social network services","Collaboration","Measurement","Filtering"
Publisher
ieee
Conference_Titel
Hot Topics in Web Systems and Technologies (HotWeb), 2015 Third IEEE Workshop on
Type
conf
DOI
10.1109/HotWeb.2015.9
Filename
7372288
Link To Document