Data di Pubblicazione:
2015
Abstract:
This paper presents the first systematic investigation
of the potential performance gains for crowdsourcing systems,
deriving from available information at the requester about
individual worker earnestness (reputation). In particular, we first
formalize the optimal task assignment problem when workers'
reputation estimates are available, as the maximization of a
monotone (submodular) function subject to Matroid constraints.
Then, being the optimal problem NP-hard, we propose a simple
but efficient greedy heuristic task allocation algorithm. We also
propose a simple "maximum a-posteriori" decision rule. Finally,
we test and compare different solutions, showing that system
performance can greatly benefit from information about workers'
reputation. Our main findings are that: i) even largely inaccurate
estimates of workers' reputation can be effectively exploited in the
task assignment to greatly improve system performance; ii) the
performance of the maximum a-posteriori decision rule quickly
degrades as worker reputation estimates become inaccurate; iii)
when workers' reputation estimates are significantly inaccurate,
the best performance can be obtained by combining our proposed
task assignment algorithm with the LRA decision rule introduced
in the literature.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Keywords:
Crowdsourcing systems
Elenco autori:
AJMONE MARSAN, MARCO GIUSEPPE; Leonardi, Emilio; Nordio, Alessandro; Tarable, Alberto
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