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Dr. S. M. Kamruzzaman

Assistant Professor

Department of Software Engineering, College of Computer and Information Sciences

علوم الحاسب والمعلومات
Building No. 31, Level 2
المنشورات
مقال فى مجلة
2006

An algorithm to extract rules from artificial neural networks for medical diagnosis problems

Kamruzzaman, S. M. . 2006

Artificial neural networks (ANNs) have been successfully applied to solve a variety of classification and function approximation problems. Although ANNs can generally predict better than decision trees for pattern classification problems, ANNs are often regarded as black boxes since their predictions cannot be explained clearly like those of decision trees. This paper presents a new algorithm, called rule extraction from ANNs (REANN), to extract rules from trained ANNs for medical diagnosis problems. A standard three-layer feedforward ANN with four-phase training is the basis of the proposed algorithm. In the first phase, the number of hidden nodes in ANNs is determined automatically by a constructive algorithm. In the second phase, irrelevant connections and input nodes are removed from trained ANNs without sacrificing the predictive accuracy of ANNs. The continuous activation values of the hidden nodes are discretized by using an efficient heuristic clustering algorithm in the third phase. Finally, rules are extracted from compact ANNs by examining the discretized activation values of the hidden nodes. Extensive experimental studies on three benchmark classification problems, i.e. breast cancer, diabetes and lenses, demonstrate that REANN can generate high quality rules from ANNs, which are comparable with other methods in terms of number of rules, average number of conditions for a rule, and predictive accuracy.
رقم المجلد
12
رقم الانشاء
8
مجلة/صحيفة
International Journal of Information Technology (IJIT)
الصفحات
pp. 41-59
مزيد من المنشورات
publications

In cognitive radio (CR) ad hoc networks, spectrum efficiency and energy efficiency are vitally important because spectrum availability is opportunistic in nature and mobile CR nodes usually have…

بواسطة S. M. Kamruzzaman, Abdullah Alghamdi, Abdulhameed Alelaiwi, Mohammad Mehedi Hassan
2014
publications

Command, control, communication, computer and intelligence (C4I) systems provide situational awareness, which contributes to the decision making process in complex operational environment. The C4I…

بواسطة S. M. Kamruzzaman, Abdullah Alghamdi
2014
publications

Routing is one of the most important issues in multihop ad hoc networks. In the routing for mobile cognitive radio (CR) networks, the constraints on residual energy of each user and the…

بواسطة S. M. Kamruzzaman, Eunhee Kim, Dong Geun Jeong, Wha Sook Jeon
2012