Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

Chaos Genetic Algorithm and Adaboost Algorithm for Clustering the Data


Affiliations
1 Department of CS & IT, Arbaminch Institute of Technology, Arbaminch University, Arbaminch, Ethiopia
     

   Subscribe/Renew Journal


In this research the performance of AdaBoost algorithm and Chaos Genetic Algorithm were made in real learning problems. To cluster the data two experiments were made, initially the experiment were made to compare the AdaBoost with Chaos Genetic Algorithm when used to aggregate various classifiers. Secondly the Time-Cost Tradeoff (TCT) problems have been studied with the optimization techniques. With higher efficiency the two methods were compared and processed.  It avoids local convergence when comparing the diversity of Chaos Genetic Algorithm with AdaBoost. Moreover, the experimental results shows that the proposed method minimizes the number of iterations in optimization problems and significantly increase the performance of the adaboost. This paper compared the performance of these two methods by using the machine learning benchmarks.


Keywords

AdaBoost, Chaos Genetic Algorithm, Data Clustering, Optimization.
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 263

PDF Views: 1




  • Chaos Genetic Algorithm and Adaboost Algorithm for Clustering the Data

Abstract Views: 263  |  PDF Views: 1

Authors

Jenifer Mahilraj
Department of CS & IT, Arbaminch Institute of Technology, Arbaminch University, Arbaminch, Ethiopia
Mesay Samuel
Department of CS & IT, Arbaminch Institute of Technology, Arbaminch University, Arbaminch, Ethiopia
Amin Tuni Gure
Department of CS & IT, Arbaminch Institute of Technology, Arbaminch University, Arbaminch, Ethiopia

Abstract


In this research the performance of AdaBoost algorithm and Chaos Genetic Algorithm were made in real learning problems. To cluster the data two experiments were made, initially the experiment were made to compare the AdaBoost with Chaos Genetic Algorithm when used to aggregate various classifiers. Secondly the Time-Cost Tradeoff (TCT) problems have been studied with the optimization techniques. With higher efficiency the two methods were compared and processed.  It avoids local convergence when comparing the diversity of Chaos Genetic Algorithm with AdaBoost. Moreover, the experimental results shows that the proposed method minimizes the number of iterations in optimization problems and significantly increase the performance of the adaboost. This paper compared the performance of these two methods by using the machine learning benchmarks.


Keywords


AdaBoost, Chaos Genetic Algorithm, Data Clustering, Optimization.