k -Nearest Neighbor Classification over Semantically Secure Encrypted Relational Data
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Data mining is the analysis step of the “Knowledge Discovery in database”. It is an interdisciplinary subfield of computer science and the computational process of discovering patterns in large data sets Classification is a data mining technique used to predict group membership for data instances. Data is one of the most valuable assets for organization. It can facilitate users or organizations to meet their diverse goals, ranging from scientific advances to business intelligence. Data  Mining  has  wide  use in  many  fields  such as  financial,  medication,  medical  research  and  among  government  departments. Classification is one of the widely applied works in data mining applications. For the past several years, due to the increase of various privacy  problems,  many  conceptual  and  realistic  alternatives to  the  classification  issue  have  been  suggested  under  various  protection designs. On the other hand, with the latest reputation of cloud processing, users now have to be able to delegate their data, in encoded form, as well as the information mining task to the cloud.  Considering  that  the  information on  the  cloud is in  secured  type,  current privacy-preserving  classification  methods  are  not  appropriate. In this project, we concentrate on fixing the classification issue over encoded data. In specific, we recommend a protected k-NN classifier over secured data in the cloud. The suggested protocol defends the privacy of information, comfort of user’s feedback query, and conceals the information access styles. To the best of our information, our task is the first to create a protected k-NN classifier over secured data under the semi-honest model. Also, we empirically evaluate the performance of our suggested protocol utilizing a real-world dataset under various parameter configurations.
						Tags: 2015, Data Mining Projects, Dotnet					
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