Title of article :
Controlled generation of hard and easy Bayesian networks: Impact on maximal clique size in tree clustering Original Research Article
Author/Authors :
Ole J. Mengshoel، نويسنده , , David C. Wilkins، نويسنده , , Heikki Mannila and Dan Roth ، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Pages :
38
From page :
1137
To page :
1174
Abstract :
This article presents and analyzes algorithms that systematically generate random Bayesian networks of varying difficulty levels, with respect to inference using tree clustering. The results are relevant to research on efficient Bayesian network inference, such as computing a most probable explanation or belief updating, since they allow controlled experimentation to determine the impact of improvements to inference algorithms. The results are also relevant to research on machine learning of Bayesian networks, since they support controlled generation of a large number of data sets at a given difficulty level. Our generation algorithms, called BPART and MPART, support controlled but random construction of bipartite and multipartite Bayesian networks. The Bayesian network parameters that we vary are the total number of nodes, degree of connectivity, the ratio of the number of non-root nodes to the number of root nodes, regularity of the underlying graph, and characteristics of the conditional probability tables. The main dependent parameter is the size of the maximal clique as generated by tree clustering. This article presents extensive empirical analysis using the Hugin tree clustering approach as well as theoretical analysis related to the random generation of Bayesian networks using BPART and MPART.
Keywords :
Tree clustering inference , Probabilistic reasoning , Maximal clique size , Bayesian networks , C/V
Journal title :
Artificial Intelligence
Serial Year :
2006
Journal title :
Artificial Intelligence
Record number :
1207501
Link To Document :
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