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Accelerating linear causal model discovery using hoeffding bounds

journal contribution
posted on 2004-09-21, 00:00 authored by Gang LiGang Li, Honghua Dai, Yiqing Tu, T Kurt
Efficiently inducing precise causal models accurately reflecting given data sets is the ultimate goal of causal discovery. The algorithms proposed by Dai et al. has demonstrated the ability of the Minimum Message Length (MML) principle in discovering Linear Causal Models from training data. In order to further explore ways to improve efficiency, this paper incorporates the Hoeffding Bounds into the learning process. At each step of causal discovery, if a small number of data items is enough to distinguish the better model from the rest, the computation cost will be reduced by ignoring the other data items. Experiments with data set from related benchmark models indicate that the new algorithm achieves speedup over previous work in terms of learning efficiency while preserving the discovery accuracy.

History

Journal

Lecture notes in computer science

Volume

3157

Pagination

201 - 210

Publisher

Springer-Verlag

Location

Berlin, Germany

ISSN

0302-9743

eISSN

1611-3349

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2004, Springer-Verlag

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