Shahab Wahhab KareemMehmet Cudi Okur
In machine-learning, one of the useful scientific models for producing the structure of knowledge is Bayesian network, which can draw probabilistic dependency relationships between variables. The score and search is a method used for learning the structure of a Bayesian network. The authors apply the Falcon Optimization Algorithm (FOA) as a new approach to learning the structure of Bayesian networks. This paper uses the Reversing, Deleting, Moving and Inserting operations to adopt the FOA for approaching the optimal solution of Bayesian network structure. Essentially, the falcon prey search strategy is used in the FOA algorithm. The result of the proposed technique is compared with Pigeon Inspired optimization, Greedy Search, and Simulated Annealing using the BDeu score function. The authors have also examined the performances of the confusion matrix of these techniques utilizing several benchmark data sets. As shown by the evaluations, the proposed method has more reliable performance than the other algorithms including producing better scores and accuracy values.
Hoshang Qasim AwlaShahab Wahhab KareemAmin Salih Mohammed
Song GaoQinkun XiaoQuan PanQingguo Li
Wenqiang GuoXiaoguang GaoQinkun Xiao
Kayvan AsghariMohammad MasdariFarhad Soleimanian GharehchopoghRahim Saneifard
Xingping SunChang ChenLu WangHongwei KangYong ShenQingyi Chen