Title of article :
Artificial Immune Classifier (aiCLS): An Immune Inspired Supervised Machine Learning Method
Author/Authors :
Ehsani، S. Amir نويسنده Faculty of Electrical, Computer and IT Engineering , , Eftekhari Moghadam، Amir Masoud نويسنده Dept. of Electrical Engineering and computer Science ,
Issue Information :
فصلنامه با شماره پیاپی 16 سال 2012
Abstract :
Artificial immune systems have been proven to be efficient in pattern recognition, data clustering and data
classification. The proposed method is a novel artificial immune classifier called aiCLS based on aiNET. Artificial
immune network (aiNET) is an efficient data analysis and clustering algorithm capable of clustering simple datasets
through complex ones. Hidden capabilities of aiNET for supervised learning were significantly considered by aiCLS.
The proposed method takes a local optimization approach to classification problem. It generates local optimum cells
to recognize any given training antigen. Concatenation of these cells results in a global optimum classifier. The novelty
of aiCLS has been discussed from both computational and immunological aspects. From the computational aspect,
aiCLS is a fast one-shot learner algorithm with regard to the proposed “iterative clonal selection”. From the
immunological aspect, aiCLS introduces a novel clonal suppression method called “dissimilarity proportional clonal
suppression (DPCS)”, which increases data reduction and convergence to local optimum for any given antigen. DPCS
alters convergence through a greedy suppression, which takes antibody-antigen affinity into account. The
experimental results show that aiCLS outperforms artificial immune recognition system (AIRS) on UCI benchmark
datasets in both classification accuracy and data reduction.
Journal title :
International Journal of Information and Communication Technology Research
Journal title :
International Journal of Information and Communication Technology Research