Title
Integrating New Refinement Operators in Terminological Decision Trees Learning.
Abstract
The problem of predicting the membership w.r.t. a target concept for individuals of Semantic Web knowledge bases can be cast as a concept learning problem, whose goal is to induce intensional definitions describing the available examples. However, the models obtained through the methods borrowed from Inductive Logic Programming e.g. Terminological Decision Trees, may be affected by two crucial aspects: the refinement operators for specializing the concept description to be learned and the heuristics employed for selecting the most promising solution i.e. the concept description that describes better the examples. In this paper, we started to investigate the effectiveness of Terminological Decision Tree and its evidential version when a refinement operator available in DL-Learner and modified heuristics are employed. The evaluation showed an improvement in terms of the predictiveness.
Year
DOI
Venue
2016
10.1007/978-3-319-49004-5_33
EKAW
Field
DocType
Volume
Inductive logic programming,Data mining,Decision tree,Computer science,Concept learning,Semantic Web,Description logic,Heuristics,Artificial intelligence,Operator (computer programming),Machine learning
Conference
10024
ISSN
Citations 
PageRank 
0302-9743
2
0.38
References 
Authors
7
4
Name
Order
Citations
PageRank
Giuseppe Rizzo134937.75
Nicola Fanizzi2112490.54
Jens Lehmann35375355.08
Lorenz Bühmann460331.20