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research
Trust-Based Fusion of Untrustworthy Information in Crowdsourcing Applications
Authors
N. R. Jennings
Alex Rogers
Matteo Venanzi
Publication date
1 January 2013
Publisher
Abstract
In this paper, we address the problem of fusing untrustworthy reports provided from a crowd of observers, while simultaneously learning the trustworthiness of individuals. To achieve this, we construct a likelihood model of the userss trustworthiness by scaling the uncertainty of its multiple estimates with trustworthiness parameters. We incorporate our trust model into a fusion method that merges estimates based on the trust parameters and we provide an inference algorithm that jointly computes the fused output and the individual trustworthiness of the users based on the maximum likelihood framework. We apply our algorithm to cell tower localisation using real-world data from the OpenSignal project and we show that it outperforms the state-of-the-art methods in both accuracy, by up to 21%, and consistency, by up to 50% of its predictions. Copyright © 2013, International Foundation for Autonomous Agents and Multiagent Systems (www.ifaamas.org). All rights reserved
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Supporting member
Spiral - Imperial College Digital Repository
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oai:spiral.imperial.ac.uk:1004...
Last time updated on 17/02/2017
Supporting member
Southampton (e-Prints Soton)
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oai:eprints.soton.ac.uk:346520
Last time updated on 21/03/2013