Hybrid filter for object reduction
The basic idea to build significant attribute the uncertain objects should remove. Several theories are dealing with uncertainty, soft set theory also handles this uncertainty problem which still an open area to be explored in knowledge management. The propose techniques Known as Filtering data set which used for maintained the inferior object and we need to look at the other side of attribute reduction. The propose technique are reducing the size of object firstly, then the Hybrid reduction are executed for generating the decision extractions. These filters have reduced the size of memory without losing the characteristic of information which absolutely highly efficient. By using Filtering the inferior object of Hybrid techniques are managed. As part of this proposal, an analysis of Hybrid reduction techniques. In the conclusion part Filtering the Hybrid show better result compared to Hybrid reduction.
Keywords: Object Reduction; Object Extractions; Parameters Reductions.
D.Molotov, “Soft set theory-first results”, Computers and Mathematics with Applications, vol.37, pp.19–31, 1999.
A.M.M.Rose, M.I.Awang, H.Hassan, A.H.Zakaria, T.Herawan, and M.M.Deris, “Hybrid Reduction in Soft Set Decision Making”, Springer, pp. 108–115, 2011.
M.A.T.Mohammed,W.M.B.W.Mohd, R.B.A.Arshah, L.Yao, “ Predefined Object Reduction” , International Journal of Advanced Research in Computer Engineering & Technology (IJARCET), Vol. 2, Issue 12 December 2013, pp. 2278 – 1323.
V.Rajpoot, Prof. S.k.Shrivastava, Prof. A.Mathur, “ An Efficient Constraint Based Soft Set Approach for Association Rule Mining ”, IJERA, Vol. 2 issue 4 July-August 2012, pp.2210-2215.
M.A.T.Mohammed,W.M.B.W.Mohd, R.B.A.Arshah, L.Yao, “parameter reduction comparision”, Asian Academic Research Associates, vol.1 issue 19 January 2014.