期刊名称:International Journal of Mechatronics, Electrical and Computer Technology
印刷版ISSN:2305-0543
出版年度:2014
卷号:4
期号:12
页码:1274-1296
出版社:Austrian E-Journals of Universal Scientific Organization
摘要:In data streams analysis, detecting concept drifting is a very important problem for real- time decision making. most existing work on classification of data streams assumes that all streaming data are labeled and the class labels are immediately available. However, in real- world applications, such as credit fraud and intrusion detection, this assumption is not always valid. Most of the existing clustering approaches are applicable to purely numerical or categorical data only, but not the both. With this motivation, we propose a semi supervised classification algorithm for data stream with unlabeled and mixed numerical and categorical data(SUNM), in which, a decision tree is adopted as the classification model. When growing a tree, a new clustering algorithm is installed to produce concept clusters and label unlabeled data at leaves. In view of deviations between history concept clusters and new ones, potential concept drifts are distinguished from noise. The experimental results show the efficacy of the propos approach.