6533b86dfe1ef96bd12c9f9a
RESEARCH PRODUCT
Treating the crowd fairly: increasing the solvers’ self-selection in idea innovation contests
Erica MazzolaMariangela PiazzaGiovanni PerroneNuran Acursubject
MarketingNetnographyProcess (engineering)business.industryComputer science05 social sciencesContext (language use)Settore ING-IND/35 - Ingegneria Economico-GestionaleCrowdsourcingCONTESTCrowdsourcing fairness netnographyData scienceTest (assessment)Organizational justice0502 economics and businessSelection (linguistics)050211 marketingbusiness050203 business & managementdescription
Abstract The success of idea crowdsourcing contests depends on the wideness of the number of solvers that voluntarily self-select to solve the problem broadcast by the seeker and previous research has started to highlight the role of fairness in the self-selection process of solvers. This study aims at deepening the understanding concerning how fairness can influence the solvers’ self-selection. By applying a netnographic research design, we identify possible unexplored facets of fairness in the crowdsourcing context, i.e., prize award, award guaranteed, and non-blind contest. Theoretically, we drew from the organizational justice and fairness literature to develop hypotheses about how the three fairness elements affect solvers’ participation in idea crowdsourcing contests. Then, to empirically test the hypotheses, we performed an econometric analysis building on a distinctive dataset of 1067 contests, broadcast on the 99designs crowdsourcing platform. We found that the three fairness factors which emerged from the netnography have a positive impact on the self-selection of solvers. The results of this study offer important contributions to previous literature and provide several implications for organizations and contest organizers in the idea crowdsourcing context.
year | journal | country | edition | language |
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2020-11-01 |