Title :
Relevant data expansion for learning concept drift from sparsely labeled data
Author :
Widyantoro, Dwi H. ; Yen, John
Author_Institution :
Dept. of Informatics Eng., Inst. Teknologi Bandung, Indonesia
fDate :
3/1/2005 12:00:00 AM
Abstract :
Keeping track of changing interests is a natural phenomenon as well as an interesting tracking problem because interests can emerge and diminish at different time frames. Being able to do so with a few feedback examples poses an even more important and challenging problem because existing concept drift learning algorithms that handle the task typically suffer from it. This work presents a new computational framework for extending incomplete labeled data stream (FEILDS), which extends the capability of existing algorithms for learning concept drift from a few labeled data. The system transforms the original input stream into a new stream that can be conveniently tracked by the existing learning algorithms. The experiment results reveal that FEILDS can significantly improve the performances of a Multiple Three-Descriptor Representation (MTDR) algorithm, Rocchio algorithm, and window-based concept drift learning algorithms when learning from a sparsely labeled data stream with respect to their performances without using FEILDS.
Keywords :
data handling; information filtering; learning (artificial intelligence); relevance feedback; statistical analysis; Multiple Three-Descriptor Representation algorithm; Rocchio algorithm; concept drift learning algorithms; incomplete labeled data stream; information filtering; relevance feedback; sparsely labeled data stream; Availability; Feedback; Information filtering;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2005.48