Publication | Closed Access
Attribute Relationship Evaluation Methodology for Big Data Security
66
Citations
7
References
2013
Year
Unknown Venue
EngineeringData ScienceData MiningInformation SecurityCloud ComputingKnowledge DiscoveryData-centric SecurityData PrivacySecurity EvaluationData IntegrationComputer ScienceBig Data SearchBig Data SecuritySecurity MeasurementData ManagementData SecurityBig DataBig Data Model
There has been an increasing interest in big data and big data security with the development of network technology and cloud computing. However, big data is not an entirely new technology but an extension of data mining. In this paper, we describe the background of big data, data mining and big data features, and propose attribute selection methodology for protecting the value of big data. Extracting valuable information is the main goal of analyzing big data which need to be protected. Therefore, relevance between attributes of a dataset is a very important element for big data analysis. We focus on two things. Firstly, attribute relevance in big data is a key element for extracting information. In this perspective, we studied on how to secure a big data through protecting valuable information inside. Secondly, it is impossible to protect all big data and its attributes. We consider big data as a single object which has its own attributes. We assume that a attribute which have a higher relevance is more important than other attributes.
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