BMADSN: Big data multi-community anomaly detection in social networks
Autor: | Manjunatha Hc, Mohanasundaram R |
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Rok vydání: | 2019 |
Předmět: |
business.industry
Computer science Anomaly (natural sciences) 05 social sciences Big data 050301 education 02 engineering and technology Data science Education 020204 information systems Outlier 0202 electrical engineering electronic engineering information engineering Anomaly detection Electrical and Electronic Engineering business 0503 education |
Zdroj: | The International Journal of Electrical Engineering & Education. :002072091989106 |
ISSN: | 2050-4578 0020-7209 |
DOI: | 10.1177/0020720919891065 |
Popis: | In today's world, most of the people are using social networks for day-to-day activities. The most frequently used social sites are Facebook, Twitter, Google+, etc. These popular social networks are used by some of the users for abnormal or illegal activities. It is very important and necessary to identify and avoid such illegal activities without harming anyone in the society. In recent decades, social networks are becoming a popular research area for most researchers. Many authors are doing research on social network datasets and proposing various anomaly detection mechanisms to identify anomalous activities in both static and dynamic growing social networks. Various anomaly detection techniques are proposed by the authors to investigate malicious activities in social networks. In general, the process of identifying anomaly activities of the users in the given dataset is called anomaly detection. The anomaly detection in social networks is the process of investigating whether the users of the given social networks are involved in illegal activities or not. In this work, we proposed a most elegant approach to identify the anomalous or outlier users in the given social network. The proposed approach is considering the users participated in multiple communities of social networks. The designed algorithms are implemented and tested in a big data environment three node cluster using open source Hadoop ecosystem tools. Algorithm1 is used to investigate the nodes/users who participated in multiple communities of the given social network’s dataset. Algorithm2 takes the set of users participated in multiple communities and apply graph metrics such as degree and community score to predict the users involved in the anomalous activity. |
Databáze: | OpenAIRE |
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