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Reliable knowledge discovery with a minimal causal model inducer

conference contribution
posted on 2012-01-01, 00:00 authored by Honghua Dai, Sarah Keble-Johnston, Min Gan
This paper presents a Minimal Causal Model Inducer that can be used for the reliable knowledge discovery. The minimal-model semantics of causal discovery is an essential concept for the identification of a best fitting model in the sense of satisfactory consistent with the given data and be the simpler, less expressive model. Consistency is one of major measures of reliability in knowledge discovery. Therefore to develop an algorithm being able to derive a minimal model is an interesting topic in the are of reliable knowledge discovery. various causal induction algorithms and tools developed so far can not guarantee that the derived model is minimal and consistent. It was proved the MML induction approach introduced by Wallace, Keven and Honghua Dai is a minimal causal model learner. In this paper, we further prove that the developed minimal causal model learner is reliable in the sense of satisfactory consistency. The experimental results obtained from the tests on a number of both artificial and real models provided in this paper confirm this theoretical result.

History

Event

Data Mining Workshop. Conference (12th : 2012 : Brussels, Belgium)

Pagination

629 - 634

Publisher

IEEE

Location

Brussels, Belgium

Place of publication

Piscataway, N.J.

Start date

2012-12-10

ISBN-13

9780769549255

Language

eng

Publication classification

E1 Full written paper - refereed

Editor/Contributor(s)

J Vreeken, C Ling, M Zaki, A Siebes, Y Xu, B Goethals, G Webb, X Wu

Title of proceedings

ICDMW 2012 : Proceedings of the 12th IEEE International Conference on Data Mining Workshops

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