Alireza KhanteymooriMohammad Bagher MenhajMohammad Mehdi Homayounpour
A new structure learning approach for Bayesian networks based on asexual reproduction optimization (ARO) is proposed in this paper. ARO can be considered an evolutionary-based algorithm that mathematically models the budding mechanism of asexual reproduction. In ARO, a parent produces a bud through a reproduction operator; thereafter, the parent and its bud compete to survive according to a performance index obtained from the underlying objective function of the optimization problem: This leads to the fitter individual. The convergence measure of ARO is analyzed. The proposed method is applied to real-world and benchmark applications, while its effectiveness is demonstrated through computer simulations. Results of simulations show that ARO outperforms genetic algorithm (GA) because ARO results in a good structure and fast convergence rate in comparison with GA.
R. KhanteymooriMohammad Mehdi HomayounpourMohammad Bagher Menhaj
Sajad AhmadianAlireza Khanteymoori
Seyyed Mohammad Reza HashemiEhsan KozegarMohammad Mahdi DeramgozinBehrouz Minaei‐Bidgoli
Anahita Farhang GhahfarokhiTaha MansouriMohammad Reza Sadeghi MoghadamNila BahrambeikR. YavariMohammadreza Fani Sani
Song GaoQinkun XiaoQuan PanQingguo Li