National Natural Science Foundation of China (No.60774064, No.61305133);Research Fund for the Doctoral Program of Higher Education of China (No.20116102110026);Fundamental Research Funds for the Central Universities (No.3102015KY0902, No.3102015BJ (Ⅱ)GH01)
The Modeling Method with Bayesian Networks and Its Application in the Threat Assessment Under Small Data Sets[J]. Acta Electronica Sinica, 2016, 44(6): 1504-1511.
DOI:
The Modeling Method with Bayesian Networks and Its Application in the Threat Assessment Under Small Data Sets[J]. Acta Electronica Sinica, 2016, 44(6): 1504-1511. DOI: 10.3969/j.issn.0372-2112.2016.06.035.
The Modeling Method with Bayesian Networks and Its Application in the Threat Assessment Under Small Data Sets
Bayesian network is one of the main tools for data mining.In such cases as large equipment fault diagnosis
geological disaster forecast
operational decision
etc
good results are expected to achieve based on small data sets.Therefore
this article focuses on the problem of learning Bayesian network from small data sets.Firstly
the structure constraint model based on the probability distribution of the connection was built.Then
the improved-Bayesian Dirichlet-binary particle swarm optimization algorithm was proposed.Secondly
the monotonicity parameter constraint model was defined and the monotonicity constraint estimation algorithm was proposed.Finally
the proposed algorithm was applied to construct the threat assessment model.Then
the model was used for reasoning with the variable elimination method.Experimental results reveal that the structure learning algorithm outperforms classical binary particle swarm optimization algorithm and the parameter learning method surpasses maximum likelihood estimation
isotonic regression and convex optimization method for small data sets.The threat assessment model is also proved to be effective.