Title :
Mechanism Design for Crowdsourcing: An Optimal 1-1/e Competitive Budget-Feasible Mechanism for Large Markets
Author :
Anari, Nima ; Goel, Geetika ; Nikzad, Afshin
Author_Institution :
Univ. of California, Berkeley, Berkeley, CA, USA
Abstract :
In this paper we consider a mechanism design problem in the context of large-scale crowdsourcing markets such as Amazon´s Mechanical Turk mturk, ClickWorker clickworker, CrowdFlower crowdflower. In these markets, there is a requester who wants to hire workers to accomplish some tasks. Each worker is assumed to give some utility to the requester on getting hired. Moreover each worker has a minimum cost that he wants to get paid for getting hired. This minimum cost is assumed to be private information of the workers. The question then is -- if the requester has a limited budget, how to design a direct revelation mechanism that picks the right set of workers to hire in order to maximize the requester´s utility? We note that although the previous work (Singer (2010) chen et al. (2011)) has studied this problem, a crucial difference in which we deviate from earlier work is the notion of large-scale markets that we introduce in our model. Without the large market assumption, it is known that no mechanism can achieve a competitive ratio better than 0.414 and 0.5 for deterministic and randomized mechanisms respectively (while the best known deterministic and randomized mechanisms achieve an approximation ratio of 0.292 and 0.33 respectively). In this paper, we design a budget-feasible mechanism for large markets that achieves a competitive ratio of 1 - 1/e ≃ 0.63. Our mechanism can be seen as a generalization of an alternate way to look at the proportional share mechanism, which is used in all the previous works so far on this problem. Interestingly, we can also show that our mechanism is optimal by showing that no truthful mechanism can achieve a factor better than 1 - 1/e, thus, fully resolving this setting. Finally we consider the more general case of submodular utility functions and give new and improved mechanisms for the case when the market is large.
Keywords :
approximation theory; budgeting; outsourcing; personnel; pricing; procurement; utility theory; Amazon Mechanical Turk; CLKWRKR; CRDFLWR; ClickWorker; CrowdFlower; MTRK; approximation ratio; competitive ratio; crowdsourcing mechanism design problem; deterministic mechanisms; large-scale crowdsourcing markets; optimal 1-1/e competitive budget-feasible mechanism; proportional share mechanism; randomized mechanisms; requester utility maximization; submodular utility functions; worker hiring; worker private information; Additives; Approximation methods; Crowdsourcing; Polynomials; Pricing; Resource management; Standards; Budget-feasibility; Crowdsourcing; Large Markets; Truthful Mechanisms;
Conference_Titel :
Foundations of Computer Science (FOCS), 2014 IEEE 55th Annual Symposium on
Conference_Location :
Philadelphia, PA
DOI :
10.1109/FOCS.2014.36