Title
A new intelligent artificial immune systems based ensemble for high-dimensional data clustering
Abstract
This paper introduces a new ensemble based on different artificial immune algorithms and it is optimized by using a Particle Swarm algorithm. The new proposed architecture of the ensemble introduces a major enhancement to the data classification. The main focus of this paper is devoted for building an ensemble model that integrates three different AIS techniques towards achieving better classification results. A new AIS-based ensemble architecture with adaptive learning features is proposed by integrating different learning and adaptation techniques to overcome the limitations of the individual algorithms and to achieve synergistic effects through the combination of these techniques. Furthermore, a new method for measuring confidence level of AIS based classifier is introduced in this work as well. On the other hand and in order to enhance the overall performance of the classification process, an optimizer using particle swarm optimization algorithm is going to be adopted. The performance of the proposed ensemble is tested by running several experiments using different medical datasets.
Year
DOI
Venue
2014
10.3233/HIS-140193
International Journal of Hybrid Intelligent Systems
Keywords
Field
DocType
adaptive learning,artificial immune systems,classification and clustering,pso
Particle swarm optimization,Data mining,Clustering high-dimensional data,Artificial immune system,Ensemble forecasting,Computer science,Artificial intelligence,Data classification,Cluster analysis,Adaptive learning,Ensemble learning,Machine learning
Journal
Volume
Issue
Citations 
11
3
0
PageRank 
References 
Authors
0.34
11
3
Name
Order
Citations
PageRank
Jamal Al-Enzi100.34
Salah al-Sharhan210613.21
Maysam Abbod3387.15