Developing Efficient framework for social Security Data Mining Methodology

Pranjali Barde, Minal Bobade, Rani K. Kakde, Vaishali V Rathod

Abstract


The importance of security for social sites is incredibly important currently days. Typical welfare countries, like Australia have accumulated an outsized quantity of social insurance and social welfare knowledge. social insurance data processing is predicated on connected references from past history on large info of social sites. This includes SSDM framework and problems social insurance challenges goals in mining the social insurance or welfare knowledge. In this antecedently work done on techniques for social insurance data processing.
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Copyright (c) 2016 Pranjali Barde, Minal Bobade, Rani K. Kakde, Vaishali V Rathod

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