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On q -BFGS algorithm for unconstrained optimization problems

机译:关于Q-BFGS算法的无约束优化问题

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Variants of the Newton method are very popular for solving unconstrained optimization problems. The study on global convergence of the BFGS method has also made good progress. The q-gradient reduces to its classical version when q approaches 1. In this paper, we propose a quantum-Broyden–Fletcher–Goldfarb–Shanno algorithm where the Hessian is constructed using the q-gradient and descent direction is found at each iteration. The algorithm presented in this paper is implemented by applying the independent parameter q in the Armijo–Wolfe conditions to compute the step length which guarantees that the objective function value decreases. The global convergence is established without the convexity assumption on the objective function. Further, the proposed method is verified by the numerical test problems and the results are depicted through the performance profiles.
机译:牛顿方法的变种非常受欢迎,可以解决不受约束的优化问题。 关于BFGS方法的全球收敛研究也取得了良好的进展。 当Q接近时,Q梯度减少到其经典版本。在本文中,我们提出了一种Quantum-Broyden-Fletcher-GoldFarb-Shanno算法,其中使用Q梯度和下降方向构造Hessian。 本文呈现的算法是通过在Armijo-Wolfe条件中应用独立的参数Q来实现的,以计算阶梯长度,这保证了目标函数值降低。 在无目标函数上没有凸起假设的情况下建立全局收敛。 此外,通过数值测试问题验证所提出的方法,并且通过性能配置文件描绘了结果。

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