A NOVEL ALGORITHM FOR ASSOCIATION RULE MINING FROM DATA WITH INCOMPLETE AND MISSING VALUES
Journal: ICTACT Journal on Soft Computing (IJSC) (Vol.1, No. 4)Publication Date: 2011-04-01
Authors : K. Rameshkumar;
Page : 171-177
Keywords : Data Mining; Association Rule; Frequent Itemset; Missing Values; Incomplete Dataset;
Abstract
Missing values and incomplete data are a natural phenomenon in real datasets. If the association rules mine incomplete disregard of missing values, mistaken rules are derived. In association rule mining, treatments of missing values and incomplete data are important. This paper proposes novel technique to mine association rule from data with missing values from large voluminous databases. The proposed technique is decomposed into two sub problems: database scrutinizes and rules mining phases. The first phase is used to reexamine transactions which are useful to mine frequent itemset. The second phase is to mine frequent itemset amd construct association rules from valid database. This paper uses Apriori based algorithm in which proposed technique. The proposed technique is tested with synthetic and real T40I10D100K, Mushroom, Chess and Heart disease prediction datasets. Experimental results are shown that the proposed technique outperforms than robust association rule mining (RAR) and Association rules from data with Missing values by Database Partitioning and Merging (AMDPM) algorithm
Other Latest Articles
- CODEBOOK ENHANCEMENT FOR VECTOR QUANTIZATION USING MINMAX VALUES FOR IMAGE COMPRESSION
- AN ILLUMINATION INVARIANT TEXTURE BASED FACE RECOGNITION
- ROAD DETECTION USING MORPHOLOGICAL OPERATIONS IN A COMPLEX SCENARIO
- FUZZY BASED IMAGE DIMENSIONALITY REDUCTION USING SHAPE PRIMITIVES FOR EFFICIENT FACE RECOGNITION
- IMPLEMENTATION OF ARTIFICIAL NEURAL NETWORK FOR FACE RECOGNITION USING GABOR FEATURE EXTRACTION
Last modified: 2013-12-05 18:34:00