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contributor authorMasood Niazi Torshizen
contributor authorهاله امین طوسیen
contributor authorHaleh Amintoosifa
date accessioned2020-06-06T13:34:13Z
date available2020-06-06T13:34:13Z
date issued2017
identifier urihttps://libsearch.um.ac.ir:443/fum/handle/fum/3360250?show=full
description abstractThe main idea behind social crowdsensing is to leverage social friends as crowdworkers to participate in crowdsensing tasks. A main challenge, however, is the identification and recruitment of well-suited workers. This becomes especially more challenging for large-scale online social networks with potential sparseness of the friendship network which may result in recruiting participants who are not in direct friendship relations with the requester. Such recruitment may increase the possibility of collusion among participants, thus threatening the application security and affecting data quality. In this paper, we propose a collusion-resistant worker selection method which aims to prevent the selection of colluders as suitable participants. For each participant who is considered to be selected as suitable, the proposed method is aimed to prevent any possible collusion. To do so, it determines whether the selection of a new participant may result in the formation of a colluding group among the selected participants. This has been achieved through leveraging the Frequent Itemset Mining technique and defining a set of collusion behavioral indicators. Simulation results demonstrate the efficacy of our proposed collusion prevention method in terms of selecting efficient collusion indicators and detecting the colluding groups.en
languageEnglish
titleCollusion-resistant Worker Selection in Social Crowdsensing Systemsen
typeJournal Paper
contenttypeExternal Fulltext
subject keywordsworker selectionen
subject keywordscollusionen
subject keywordsdata qualityen
journal titleJournal of Computer and Knowledge Engineeringfa
pages20-Sep
journal volume1
journal issue1
identifier linkhttps://profdoc.um.ac.ir/paper-abstract-1062062.html
identifier articleid1062062


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