A Study on Associative Classification Mining
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Date
2010
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Abstract
Traditional classification techniques such as ID3, C4.5, CART and RIPPER use heuristic search methods to find a small
subset of patterns. In recent years, an emerging new approach in data mining that mainly uses association rules to discover
patterns in classification called as associative classification which focuses on large subset of data. Algorithms like CPAR, CMAR,
MCAR and MM AC are used widely in this field. Many studies show that Associative Classifiers give better accuracy than other
traditional classifiers. Associative classification system is more robust and makes predictions based on entire dataset. In this paper,
we aim to discuss an associative classification method by surveying and reviewing the current state-of-the-art called Incremental
Learning and Mining Low Quality Data sets. This improves the overall accuracy of the associative classifier. Additionally, the
classifiers produced are highly competitive with regards to error rate and efficiency.