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      Graph Mining Meets Crowdsourcing: Extracting Experts for Answer Aggregation

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          Abstract

          Aggregating responses from crowd workers is a fundamental task in the process of crowdsourcing. In cases where a few experts are overwhelmed by a large number of non-experts, most answer aggregation algorithms such as the majority voting fail to identify the correct answers. Therefore, it is crucial to extract reliable experts from the crowd workers. In this study, we introduce the notion of "expert core", which is a set of workers that is very unlikely to contain a non-expert. We design a graph-mining-based efficient algorithm that exactly computes the expert core. To answer the aggregation task, we propose two types of algorithms. The first one incorporates the expert core into existing answer aggregation algorithms such as the majority voting, whereas the second one utilizes information provided by the expert core extraction algorithm pertaining to the reliability of workers. We then give a theoretical justification for the first type of algorithm. Computational experiments using synthetic and real-world datasets demonstrate that our proposed answer aggregation algorithms outperform state-of-the-art algorithms.

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          Maximum Likelihood Estimation of Observer Error-Rates Using the EM Algorithm

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            On Finding Dense Subgraphs

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                Author and article information

                Journal
                17 May 2019
                Article
                1905.08088
                a40c0c2b-845c-4cb9-be29-e292f5a7d59f

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

                History
                Custom metadata
                Accepted to IJCAI2019
                cs.SI cs.AI cs.HC cs.LG

                Social & Information networks,Artificial intelligence,Human-computer-interaction

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