Title of article
Learning Bayesian networks from data: An information-theory based approach Original Research Article
Author/Authors
Jie Cheng، نويسنده , , Russell Greiner، نويسنده , , Jonathan Kelly، نويسنده , , David Bell، نويسنده , , Weiru Liu، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2002
Pages
48
From page
43
To page
90
Abstract
This paper provides algorithms that use an information-theoretic analysis to learn Bayesian network structures from data. Based on our three-phase learning framework, we develop efficient algorithms that can effectively learn Bayesian networks, requiring only polynomial numbers of conditional independence (CI) tests in typical cases. We provide precise conditions that specify when these algorithms are guaranteed to be correct as well as empirical evidence (from real world applications and simulation tests) that demonstrates that these systems work efficiently and reliably in practice.
Keywords
Monotone DAG-faithful , Information theory , Bayesian belief nets , Probabilistic model , Knowledge discovery , Data mining , Conditional independence test , Learning
Journal title
Artificial Intelligence
Serial Year
2002
Journal title
Artificial Intelligence
Record number
1207111
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