“…Among gradient models, a globally convergent plan based on FischerâBurmeister operators for solving secondâorder cone constrained variational inequality problems by Nazemi and Sabeghi in Reference 32, by Nazemi and Mortezaee in Reference 33 for minâmax problems, for semidefinite programming problems by Nikseresht and Nazemi in Reference 36, by Miao et al 35 for efficiently solving nonlinear convex programs with secondâorder cone constraints. For projection models, Hu and Wang 42 for solving pseudoâmonotone variational inequalities and pseudoâconvex optimization problems examined a projection neural network, Arjmandzadeh et al 44 also studied a new neural network model for solving random interval linear programming problems, Effati et al 46 established a projection type neural network model to solve bilinear programming problems, He et al 50 introduced a projection type neural network model to solve variational inequalities, Mansoori et al 51 discussed on a model to solve the absolute value equations, Nikseresht and Nazemi 52,53 addressed two projection networks for linear and nonlinear semiâdefinite programming problems, Karbasi et al 54,55 for fuzzy regression and Feizi and Nazemi 56 for stochastic support vector regression.…”