DocumentCode
264118
Title
Predicting result quality in Crowdsourcing using application layer monitoring
Author
Hirth, Matthias ; Scheuring, Sven ; Hossfeld, Tobias ; Schwartz, Christopher ; Tran-Gia, Phuoc
Author_Institution
Commun. Networks, Univ. of Wuerzburg, Wurzburg, Germany
fYear
2014
fDate
July 30 2014-Aug. 1 2014
Firstpage
510
Lastpage
515
Abstract
Crowdsourcing has become a valuable tool for many business applications requiring to meet a certain quality of the results generated by the workers. Therefore, several quality assurance mechanisms have been developed which are partly deployed in commercial crowdsourcing platforms. However, these mechanisms usually impose additional work overhead for the worker, e.g. by adding test questions, or increase the costs for the employer, e.g. by replicating the task for majority decisions. In this work, we analyze the applicability of implicit measurements to objectively estimate the quality of the workers´ results. First efforts in this area have already been made by investigating the impact of the task completion time. We extend this research by deploying an application layer monitoring (ALM), which enables monitoring the workers´ interactions with our task interface on a much more detailed level. Based on an exemplary use case, we discuss a possible implementation and demonstrate the potential of the approach by predicting the quality of the workers´ submission based on our monitoring results. This ALM provides a new way to identify low quality work as well as difficulties in fulfilling the formulated tasks in the domain of Crowdsourcing.
Keywords
business data processing; cloud computing; application layer monitoring; business application; crowdsourcing; quality assurance mechanism; task interface; Irrigation; Monitoring; Switches;
fLanguage
English
Publisher
ieee
Conference_Titel
Communications and Electronics (ICCE), 2014 IEEE Fifth International Conference on
Conference_Location
Danang
Print_ISBN
978-1-4799-5049-2
Type
conf
DOI
10.1109/CCE.2014.6916756
Filename
6916756
Link To Document