Retour à la page précédente

Informations complémentaires

Conférencier·ère
Zhan Liu, Shaban Shabani, Nicole Glassey Balet, Maria Sokhn, Fabian Cretton
Nom du congrès, lieu et date
15th Conference of IEEE Consumer Communications & Networking Conference (CCNC), Las Vegas, USA du 12.01.2018 au 18.01.2018
Contact
Liu Zhan
Extrait

Crowdsourcing, as one of the most promising techniques for distributed problem-solving, requires sustained human involvement. Therefore, it also brings new challenges to data management, fundamentally data input and its quality. In this paper, we looked at various forms of user motivations and quality control of crowdsourcing when building accessibility maps mobile applications. We discuss how motivations could be used to contribute to our accessibility maps scenarios, and how data can be improved for two types of participants: individual participants and organization participants. We identified three useful techniques for improving data quality: qualification-based, reputation-based, and aggregation-based. In addition, based on our own mobile application (named WEMAP), we evaluated our approaches through focus group discussions and in-depth interviews.