EMCAR: Expert Multi Class Based on Association Rule

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Author(s)

Wael Hadi 1,*

1. MIS Dept, Petra University, Airport Rd. ,Amman, Jordan

* Corresponding author.

DOI: https://doi.org/10.5815/ijmecs.2013.03.05

Received: 23 Dec. 2012 / Revised: 6 Jan. 2013 / Accepted: 14 Feb. 2013 / Published: 8 Mar. 2013

Index Terms

Associative Classification, Arabic Text Classification, Data Mining

Abstract

Several experimental studies revealed that expert systems have been successfully applied in real world domains such as medical diagnoses, traffic control, and many others. However, one of the major drawbacks of classic expert systems is their reliance on human domain experts which require time, care, experience and accuracy. This shortcoming also may result in building knowledge bases that may contain inconsistent rules or contradicting rules. To treat the abovementioned we intend to propose and develop automated methods based on data mining called Associative Classification (AC) that can be easily integrated into an expert system to produce the knowledge base according to hidden correlations in the input database. The methodology employed in the proposed expert system is based on learning the rules from the database rather than inputting the rules by the knowledge engineer from the domain expert and therefore, care and accuracy as well as processing time are improved. The proposed automated expert system contains a novel learning method based on AC mining that has been evaluated on Islamic textual data according to several evaluation measures including recall, precision and classification accuracy. Furthermore, five different classification approaches: Decision trees (C4.5, KNN, SVM, MCAR and NB) and the proposed automated expert system have been tested on the Islamic data set to determine the suitable method in classifying Arabic texts.

Cite This Paper

Wa'el Hadi, "EMCAR: Expert Multi Class Based on Association Rule", International Journal of Modern Education and Computer Science (IJMECS), vol.5, no.3, pp.33-41, 2013. DOI:10.5815/ijmecs.2013.03.05

Reference

[1]Kroeze, J. Matthee, M. & Bothma, T., (2003) ‘Differentiating between data-mining and text mining terminology’, ACM: Proceeding of the 2003 annual research conference of the south African institute, Vol. 47, PP.93-101.
[2]Weiss, M., S., Indurkhya, N., Zhang, T., & Damerau, F., (2005) Text mining: predictive methods for analyzing unstructured information. Springer Science Inc.
[3]Feldman, R. & Sanger, J., (2007) the Text Mining Handbook: Advanced Approaches in Analyzing Unstructured Data, NY: Cambridge University Press
[4]Song, M. (2009) Handbook of research on text and web mining technologies, information science reference, IGI global, pp. 1-22.
[5]Guo, Y., Shao, Z. & Hua, N. (2010) ‘Automatic text categorization based on content analysis with cognitive situation models’, Information Sciences 180, pp. 613–630
[6]Kantardzic, M. (2003) Data Mining: Concepts, Models, Methods, and Algorithms, John Wiley & Sons
[7]Shi, G. & Kong, Y. (2009) Advances in Theories and Applications of Text, Mining, IEEE: ICISE’09, pp. 4167 – 4170.
[8]Tan, A., H. (1999) ‘Text mining: the state of the art and the challenges’ ,Proceeding Of The Pakdd Workshop On Knowledge Discovery From Advanced Databases,. PP. 65-70
[9]Elkourdi M., Bensaid A. and Rachidi T. (2004) ‘Automatic Arabic Document Categorization Based on the Naïve Bayes Algorithm’, ACM Publication: Proceedings of the Workshop on Computational Approaches to Arabic Script-based Languages, pp: 51-58
[10]Harrag, F. El-Qawasmeh, E. & Pichappan, P. (2009) ‘Improving arabic text categorization using decision trees’, IEEE, NDT '09, pp. 110 – 115
[11]Sebastiani, F. (2002) 'Machine learning in automated text categorization' ACM Publication: ACM Computing Surveys. Vol. 3(1) : pp.1-47.
[12]Syiam, M. M., Fayed, Z. T. & Habib, M. B. (2006) ‘An Intelligent System For Arabic Text Categorization’, IJICIS, Vol.6, No. 1
[13]Khreisat, L. (2006) ‘Arabic Text Classification Using N-Gram Frequency Statistics: A Comparative Study’, Proceedings of the 2006 International Conference on Data Mining, pp. 78-82.
[14]Harrag, F. & El-Qawasmeh, E. (2009) ‘Neural Network for Arabic Text Classification’, The Second International Conference on the Applications of Digital Information, London, UK, pp.805-810, Aug. 4-6, 2009.
[15]El-Halees, A. M.(2007) ‘Arabic Text Classification Using Maximum Entropy’, The Islamic University Journal, Vol. 15, No.1, pp 157-167.
[16]Duwairi, R. (2007) ‘Arabic Text Categorization’, International Arab Journal of Information Technology, Vol.4, No.2, pp 125 – 131.
[17]Al-Harbi, S. (2008) 'Automatic Arabic Text Classification', JADT’08: 9es Journées internationales d’Analyse statistique des Données Textuelles., pp. 77-83
[18]Joachims, T. (2001) ‘A Statistical Learning Model of Text Classification for Support Vector Machines’, SIGIR’01, pp. 1 – 9.
[19]Abdelhamid N., Ayesh A., Thabtah F., Ahmadi S. and Hadi W. (2012) MAC: A Multiclass Associative Classification Algorithm. Journal of Information and Knowledge Management 11(2): (2012)
[20]Yin X. and Han J. (2003) CPAR: Classification based on predictive association rule, Proceedings of the SDM (2003) pp. 369–376.
[21]Tang Z. and Liao Q. (2007). A New Class Based Associative Classification Algorithm. IMECS 2007: 685-689.
[22]Thabtah, F., Cowling, P., and Peng, Y. (2005) MCAR: Multi-class classification based on association rule approach. Proceeding of the 3rd IEEE International Conference on Computer Systems and Applications (pp. 1-7).Cairo, Egypt.
[23]Baralis E., Chiusano S. and Garza P. (2008). A Lazy Approach to Associative Classification. IEEE Trans. Knowl. Data Eng. 20(2): 156-171.
[24]Li W., Han J. and Pei J. (2001). CMAR: Accurate and efficient classification based on multiple-class association rule. Proceedings of the ICDM’01, (pp. 369-376). San Jose, CA.