Publication: An Instance Based Learning Model for Classification in Data Streams with Concept Change
Loading...
Identifiers
Publication date
Reading date
Event date
Start date of the public exhibition period
End date of the public exhibition period
Authors
Advisors
Authors of photography
Person who provides the photography
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE
Abstract
Mining data streams has attracted the attention of the scientific community in recent years with the development of new algorithms for processing and sorting data in this area. Incremental learning techniques have been used extensively in these issues. A major challenge posed by data streams is that their underlying concepts can change over time. This research delves into the study of applying different techniques of classification for data streams, with a proposal based on similarity including a new methodology for detect and treatment of concept change. Previous experimentation are conduced with the model because it have some parameters to be tuned. A comparative statistical analysis are presented, that shows the performance of the proposed algorithm.
Doctoral program
Related publication
Research projects
Description
Bibliographic reference
2012 11th Mexican International Conference on Artificial Intelligence






