Title
Effective construction of classifiers with the k-NN method supported by a concept ontology
Abstract
In analysing sensor data, it usually proves beneficial to use domain knowledge in the classification process in order to narrow down the search space of relevant features. However, it is often not effective when decision trees or the k-NN method is used. Therefore, the authors herein propose to build an appropriate concept ontology based on expert knowledge. The use of an ontology-based metric enables mutual similarity to be determined between objects covered by respective concept ontology, taking into consideration interrelations of features at various levels of abstraction. Using a set of medical data collected with the Holter method, it is shown that predicting coronary disease with the use of the approach proposed is much more accurate than in the case of not only the k-NN method using classical metrics, but also most other known classifiers. It is also proved in this paper that the expert determination of appropriate structure of ontology is of key importance, while subsequent selection of appropriate weights can be automated.
Year
DOI
Venue
2020
10.1007/s10115-019-01391-w
Knowledge and Information Systems
Keywords
DocType
Volume
k-nearest neighbour algorithm, Ontology similarity metrics, Holter measurement, Coronary disease
Journal
62
Issue
ISSN
Citations 
4
0219-1377
1
PageRank 
References 
Authors
0.36
0
6