Title of article :
Learning Bayesian Network Structure Using Genetic Algo- rithm with Consideration of the Node Ordering via Princi- pal Component Analysis
Author/Authors :
RezaeiTabar، Vahid نويسنده , , Mahdavi، Maryam نويسنده , , Heidari، Saghar نويسنده , , Naghizadeh، Sima نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2016
Abstract :
with Bayesian networks is learn-
ing their structure. Two classical approaches are often used for learning Bayesian
network structure: Constraint-Based method and Score-and-Search-Based one.
However, neither the first nor the second one are completely satisfactory. There-
fore, the heuristic search such as Genetic Algorithms with a fitness score function
is considered for learning Bayesian network structure. To assure the closeness
of the genetic operators, the ordering among variables (nodes) must be de-
termined. In this paper, we determine the node ordering by considering the
Principal Component Analysis (PCA). For this purpose, we first determine the
appropriate correlation between variables and then use the absolute value of
variable’s coefficients in the first component. It means that a node Xi can only
Corresponding Author: have the node Xj as a parent if the absolute value of coefficient Xj in the first
component is higher than Xi. We then use the Genetic Algorithm with fitness
score BIC regarding the node ordering to construct the Bayesian Network. Experimental
results over well-known networks Asia, Alarm and Hailfinder show
that our new technique has higher accuracy and better degree of data matching.
In addition, we apply our technique to the real data set which is related to
Bank’s debtor that owe over 500 million Rials to Maskan Bank in Iran. Results
also show that the proposed technique has greater modeling power than other
node ordering techniques such as Hruschka et al. (2007), Chen et al. (2008) and
K2 algorithm.
Keywords :
Bayesian network , PCA , Genetic algorithm , Node ordering
Journal title :
Journal of the Iranian Statistical Society (JIRSS)
Journal title :
Journal of the Iranian Statistical Society (JIRSS)