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A proximal point method for difference of convex functions in multi-objective optimization with application to group dynamic problems

机译:应用于组动态问题的多目标优化中凸函数差异的近端点方法

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We consider the constrained multi-objective optimization problem of finding Pareto critical points of difference of convex functions. The new approach proposed by Bento et al. (SIAM J Optim 28:1104-1120, 2018) to study the convergence of the proximal point method is applied. Our method minimizes at each iteration a convex approximation instead of the (non-convex) objective function constrained to a possibly non-convex set which assures the vector improving process. The motivation comes from the famous Group Dynamic problem in Behavioral Sciences where, at each step, a group of (possible badly informed) agents tries to increase his joint payoff, in order to be able to increase the payoff of each of them. In this way, at each step, this ascent process guarantees the stability of the group. Some encouraging preliminary numerical results are reported.
机译:我们考虑了发现凸函数差异判断临界点的约束多目标优化问题。 Bento等人提出的新方法。 (SIAM J OPTEM 28:1104-1120,2018)研究应用了近端点方法的收敛性。 我们的方法在每次迭代时最小化凸近似,而不是(非凸起)目标函数约束到可能的非凸起集,这确保了矢量改善过程。 这种动机来自于行为科学中的着名群体动态问题,在每一步,一组(可能的严重知情)代理商试图增加他的联合支付,以便能够增加他们每个人的薪水。 以这种方式,在每个步骤中,该上升过程保证了该组的稳定性。 报告了一些令人鼓舞的初步数值。

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