Abstract

FILTRATION TECHNIQUES IN DATA MINING

Ajay, Rakesh Kumar Dr. P.K. Jakhar, Dr. Anuj Kumar

012-021

Vol: 2, Issue: 1, 2012

In this paper different subjects related to filtration are addressed. Although no completeness is aimed to, the following description deals with the most important subjects of filtration. At first an overview about filtration, particularly the principles of filtration, some aspects of beer filtration and filter ability is given, followed by an introduction of Data Mining.

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