Interactive Inductive Learning System
Databases and Information Systems VI : Selected Papers from the Ninth International Baltic Conference (DB&IS 2010) 2011
Ilze Birzniece

Inductive learning system learns classification from training examples and uses induced rules for classifying new instances. If a decision cannot be inferred from system rule base, a default rule is usually applied. No approaches with human interaction exist that would provide model of interactivity appropriate for dealing with non-classifiable instances. In the paper a new interactive approach is proposed where in uncertain conditions interactive inductive learning system can ask for human decision and improve its knowledge base with the rule derived from this decision. Problems and solutions of incorporation of human-made decision into rule base and aspects of choosing between static and incremental learning algorithms are analyzed in the context of proposed approach.


Keywords
Inductive learning, interactive inductive learning, machine learning, human-computer interaction, integrity constraints
DOI
10.3233/978-1-60750-688-1-380
Hyperlink
http://ebooks.iospress.nl/publication/6351

Birzniece, I. Interactive Inductive Learning System. In: Databases and Information Systems VI : Selected Papers from the Ninth International Baltic Conference (DB&IS 2010), Latvia, Riga, 5-7 July, 2010. Amsterdam: IOS Press, 2011, pp.380-393. ISBN 978-1-60750-687-4. ISSN 0922-6389. Available from: doi:10.3233/978-1-60750-688-1-380

Publication language
English (en)
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