Title :
Rough set analysis and cloud model algorithm to automated knowledge acquisition for classification Iris to chieve high security
Author :
Mohamed, Ettaouil ; Ahmed, Foisal ; Rehan, S.E. ; Mohamed, Ahmed Abdelreheem
Author_Institution :
Fac. of Comput. & Inf., Mansoura Univ., Mansoura, Egypt
Abstract :
Most of Intrusion Detection Systems uses all data features to detect an intrusion. Very little work addresses the importance of having a small feature subset in designing an efficient intrusion detection system. Some features are redundant and some contribute little to the intrusion detection process. Purpose of this study is to investigate the effectiveness of Rough Set Theory in identifying the important features in building an Intrusion detection system. Rough Set is also used to classify Iris data. Here, we used CASIA V1.0 (CASIA-IrisV1) data, presents In this paper, a new algorithm, Decision Tree Construction based on Rough Set Theory under Characteristic Relation (DTCRSCR), is proposed for mining classification knowledge from incomplete information systems. The algorithm is then used in iris classification. Its idea is to select the attribute whose weighted mean roughness under the characteristic relation as current splitting node. Our framework RST-DTCRSCR method result has a higher accuracy as compared to either full feature or entropy.
Keywords :
cloud computing; data mining; decision trees; feature extraction; image classification; iris recognition; knowledge acquisition; rough set theory; security of data; CASIA V1.0 data; CASIA-IrisVl; RST-DTCRSCR method; automated knowledge acquisition; characteristic relation; classification knowledge mining; cloud model algorithm; decision tree construction; feature subset; incomplete information systems; intrusion detection system; iris data classification; rough set theory; splitting node; weighted mean roughness; Accuracy; Classification algorithms; Decision trees; Feature extraction; Iris recognition; Rough sets; Testing; Biometric; DTCRSCR; Rough set; weighted mean roughness;
Conference_Titel :
Hybrid Intelligent Systems (HIS), 2011 11th International Conference on
Conference_Location :
Melacca
Print_ISBN :
978-1-4577-2151-9
DOI :
10.1109/HIS.2011.6122080