Title
Hybrid system of case-based reasoning and neural network for symbolic features
Abstract
Case-based reasoning is one of the most frequently used tools in data mining. Though it has been proved to be useful in many problems, it is noted to have shortcomings such as feature weighting problems. In previous research, we proposed a hybrid system of case-based reasoning and neural network. In the system, the feature weights are extracted from the trained neural network, and used to improve retrieval accuracy of case-based reasoning. However, this system has worked best in domains in which all features had numeric values. When the feature values are symbolic, nearest neighbor methods typically resort to much simpler metrics, such as counting the features that match. A more sophisticated treatment of the feature space is required in symbolic domains. We propose another hybrid system of case-based reasoning and neural network, which uses value difference metric (VDM) for symbolic features. The proposed system is validated by datasets in symbolic domains.
Year
DOI
Venue
2005
10.1007/11546849_26
Lecture Notes in Computer Science
Keywords
Field
DocType
symbolic feature,hybrid system,neural network,feature weighting problem,case-based reasoning,proposed system,symbolic domain,feature value,feature weight,feature space,data analysis,data mining,nearest neighbor method,information extraction,metric,knowledge discovery,data warehouse,case base reasoning,case based reasoning
k-nearest neighbors algorithm,Data mining,Feature vector,Computer science,Information extraction,Symbolic data analysis,Knowledge extraction,Artificial intelligence,Case-based reasoning,Artificial neural network,Hybrid system,Machine learning
Conference
Volume
ISSN
ISBN
3589
0302-9743
3-540-28558-X
Citations 
PageRank 
References 
3
0.41
8
Authors
3
Name
Order
Citations
PageRank
Kwang Hyuk Im1756.31
Tae Hyun Kim235929.05
Sang Chan Park348142.12