DocumentCode
3478313
Title
Knowledge Discovery via Incremental Learning
Author
Ling, Tristan ; Johns, David P. ; Kang, Byeong Ho ; Walls, Justin ; Park, Gil-Cheol
Author_Institution
Sch. of Comput., Univ. of Tasmania, Hobart, TAS
fYear
2007
fDate
11-13 Oct. 2007
Firstpage
353
Lastpage
360
Abstract
Knowledge Discovery techniques seek to find new information about a domain. These techniques can either be manually performed by an expert, or automated using software algorithms (Machine Learning). However some domains (such as the field of lung function testing) contain volumes of data too vast for effective manual analysis, and require background knowledge too complex for Machine Learning algorithms. This study examines how the Multiple Classification Ripple-Down Rules (MCRDR) Knowledge Acquisition process can be adapted to develop a new Knowledge Discovery method, Exposed MCRDR. A prototype system was developed and tested in the domain of lung function. Preliminary results suggest that the EMCRDR method can be successfully applied to efficiently discover new knowledge in a complex domain. The study also reveals many potential areas of study and development for the MCRDR method, and Knowledge Acquisition and Knowledge Discovery methods in general.
Keywords
data mining; learning (artificial intelligence); lung; medical information systems; incremental learning; knowledge acquisition; knowledge discovery; lung function; machine learning; multiple classification ripple-down rules; Data analysis; Data mining; Humans; Information analysis; Knowledge acquisition; Lungs; Machine learning; Machine learning algorithms; Performance evaluation; Testing;
fLanguage
English
Publisher
ieee
Conference_Titel
Frontiers in the Convergence of Bioscience and Information Technologies, 2007. FBIT 2007
Conference_Location
Jeju City
Print_ISBN
978-0-7695-2999-8
Type
conf
DOI
10.1109/FBIT.2007.147
Filename
4524132
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