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Comparative Study of different Lazy Learning Associative Classification Methods
P. Tamrakar,
Published in Elsevier B.V.
2019
Volume: 165
   
Pages: 370 - 376
Abstract
Lazy Learning Associative Classification (LLAC) is a promising approach in the field of data mining. It is one of the associative classification methods in which it delays the processing of training datasets until it receives the test instance for the class prediction. Lazy learning associative classification can be constructed in two phases. Subset generation is the first phase and the subset evaluation is the second phase. In the past decades, many lazy learning associative classification methods have been proposed. These algorithms utilize several different methods for subset generation and subset evaluation. This paper focuses on comparative study of different lazy learning associative classification methods. © 2019 Procedia Computer Science. All rights reserved.
About the journal
JournalData powered by TypesetProcedia Computer Science
PublisherData powered by TypesetElsevier B.V.
ISSN18770509