摘要:Many areas of artificial intelligence must handling with imperfection of
information. One of the ways to do this is using representation and reasoning with
Bayesian networks. Creation of a Bayesian network consists in two stages. First stage is
to design the node structure and directed links between them. Choosing of a structure
for network can be done either through empirical developing by human experts or
through machine learning algorithm. The second stage is completion of probability
tables for each node. Using a machine learning method is useful, especially when we
have a big amount of leaning data. But in many fields the amount of data is small,
incomplete and inconsistent. In this paper, we make a case study for choosing the best
learning method for small amount of learning data. Means more experiments we drop
conclusion of using existent methods for learning a network structure.