Abstract |
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The obligatory to anticipate the privacy
benefits of heavy downpour of monsoon rain from the
firmament clouds of Privacy Preserving Data Mining
(PPDM) Techniques have recently grown leaps and
bounds. The desiccated users & miners look for the
petite clemency from these little heavens in the form of
a framework with PPDM Techniques. In this paper we
have developed two things namely, the ontology based
data gleaning system, the gleaned data is sent to a
PPDM system which has an in-built generalization
privacy technique and the agent-based intelligent
decision support system. The primary report is on the
implementation of existing generalized framework with
alternate technology (i.e. implementation using Natural
language processing instead of heuristic based method).
Our Data Gleaning system will also allow new
algorithms and ideas to be incorporated into a data
extraction system. Extraction of information from semistructured
or unstructured documents is a useful yet
complex task. Ontologies can achieve a high degree of
accuracy in data extraction system while maintaining
resiliency in the face of document changes. Ontologies
do not, however, diminish the complexity of a dataextraction
system. As research in the field progress, the
need for a modular data-extraction system that
decouples the associated processes continues to grow.
We also propose a generalization conceptual
framework in this paper, where we guide the extracted
data from the data Gleaning system to the
generalization framework. The QI Generalization
technique in the generalized framework is used to visor
sensitive information and then publishes the privacy
preserved data for knowledge discovery. |