IMDEA Networks Institute Publications Repository

Selecting the top-quality item through crowd scoring

Nordio, Alessandro and Tarable, Alberto and Leonardi, Emilio and Ajmone Marsan, Marco (2018) Selecting the top-quality item through crowd scoring. [Journal Articles]

[img] PDF (Selecting the top-quality item through crowd scoring) - Published Version
Download (483Kb)


We investigate crowdsourcing algorithms for finding the top-quality item within a large collection of objects with unknown intrinsic quality values. This is an important problem with many relevant applications, for example in networked recommendation systems. The core of the algorithms is that objects are distributed to crowd workers, who return a noisy and biased evaluation. All received evaluations are then combined, to identify the top-quality object. We first present a simple probabilistic model for the system under investigation. Then, we devise and study a class of efficient adaptive algorithms to assign in an effective way objects to workers. We compare the performance of several algorithms, which correspond to different choices of the design parameters/metrics. In the simulations we show that some of the algorithms achieve near optimal performance for a suitable setting of the system parameters.

Item Type: Journal Articles
Depositing User: Rebeca De Miguel
Date Deposited: 28 Sep 2017 07:25
Last Modified: 30 Mar 2018 10:20

Actions (login required)

View Item View Item