期刊名称:Journal of Artificial Intelligence and Soft Computing Research
电子版ISSN:2083-2567
出版年度:2020
卷号:10
期号:4
页码:287-298
DOI:10.2478/jaiscr-2020-0019
出版社:Walter de Gruyter GmbH
摘要:The training set consists of many features that influence the classifier in different degrees. Choosing the most important features and rejecting those that do not carry relevant information is of great importance to the operating of the learned model. In the case of data streams, the importance of the features may additionally change over time. Such changes affect the performance of the classifier but can also be an important indicator of occurring concept-drift. In this work, we propose a new algorithm for data streams classification, called Random Forest with Features Importance (RFFI), which uses the measure of features importance as a drift detector. The RFFT algorithm implements solutions inspired by the Random Forest algorithm to the data stream scenarios. The proposed algorithm combines the ability of ensemble methods for handling slow changes in a data stream with a new method for detecting concept drift occurrence. The work contains an experimental analysis of the proposed algorithm, carried out on synthetic and real data.
关键词:data stream mining; random forest; features importance