Class Association Rules Mining based Rough Set Method

09/17/2015
by   Thabet Slimani, et al.
0

This paper investigates the mining of class association rules with rough set approach. In data mining, an association occurs between two set of elements when one element set happen together with another. A class association rule set (CARs) is a subset of association rules with classes specified as their consequences. We present an efficient algorithm for mining the finest class rule set inspired form Apriori algorithm, where the support and confidence are computed based on the elementary set of lower approximation included in the property of rough set theory. Our proposed approach has been shown very effective, where the rough set approach for class association discovery is much simpler than the classic association method.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/26/2023

Association Rules Mining with Auto-Encoders

Association rule mining is one of the most studied research fields of da...
research
09/03/2019

Finding Maximal Non-Redundant Association Rules in Tennis Data

The concept of association rules is well–known in data mining. But often...
research
02/24/2012

Classification approach based on association rules mining for unbalanced data

This paper deals with the binary classification task when the target cla...
research
09/22/2014

Neighborhood Selection and Rules Identification for Cellular Automata: A Rough Sets Approach

In this paper a method is proposed which uses data mining techniques bas...
research
10/31/2010

Prunnig Algorithm of Generation a Minimal Set of Rule Reducts Based on Rough Set Theory

In this paper it is considered rule reduct generation problem, based on ...
research
03/20/2019

Preference rules for label ranking: Mining patterns in multi-target relations

In this paper we investigate two variants of association rules for prefe...
research
10/24/2022

Path association rule mining

Graph association rule mining is a data mining technique used for discov...

Please sign up or login with your details

Forgot password? Click here to reset