采用非单调线搜索的无差别直流分量提升直流算法

IF 1.6 2区 数学 Q2 MATHEMATICS, APPLIED Computational Optimization and Applications Pub Date : 2024-05-11 DOI:10.1007/s10589-024-00578-4
O. P. Ferreira, E. M. Santos, J. C. O. Souza
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引用次数: 0

摘要

我们引入了一种新方法,将凸函数差分算法(BDCA)应用于解决涉及两个凸函数(DC 函数)差分的非凸和非微分问题。假设第一个凸函数分量是可微分的,而第二个分量可能是不可微分的,BDCA 的主要思想是利用凸函数算法(DCA)子问题计算出的点来定义从该点开始的目标下降方向,然后从该点开始进行单调直线搜索,以找到一个与 DCA 子问题产生的点相比目标函数减小的新点。这一过程提高了 DCA 的性能。但是,如果第一个直流分量是无差别的,那么 BDCA 计算出的方向可能是一个上升方向,无法进行单调线搜索。我们的方法在 BDCA 中使用非单调线性搜索(nmBDCA),使目标函数值的增长可能受参数控制。在适当的假设条件下,我们证明了 nmBDCA 生成的序列中的任何簇点都是所考虑问题的临界点,并提供了一些迭代复杂度边界。此外,如果第一个直流分量是可微分的,我们提出了不同的迭代复杂度边界,并证明了在目标函数的 Kurdyka-Łojasiewicz 特性下序列的完全收敛性。一些数值实验表明,nmBDCA 优于 DCA(如其单调版本)。
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A boosted DC algorithm for non-differentiable DC components with non-monotone line search

We introduce a new approach to apply the boosted difference of convex functions algorithm (BDCA) for solving non-convex and non-differentiable problems involving difference of two convex functions (DC functions). Supposing the first DC component differentiable and the second one possibly non-differentiable, the main idea of BDCA is to use the point computed by the subproblem of the DC algorithm (DCA) to define a descent direction of the objective from that point, and then a monotone line search starting from it is performed in order to find a new point which decreases the objective function when compared with the point generated by the subproblem of DCA. This procedure improves the performance of the DCA. However, if the first DC component is non-differentiable, then the direction computed by BDCA can be an ascent direction and a monotone line search cannot be performed. Our approach uses a non-monotone line search in the BDCA (nmBDCA) to enable a possible growth in the objective function values controlled by a parameter. Under suitable assumptions, we show that any cluster point of the sequence generated by the nmBDCA is a critical point of the problem under consideration and provides some iteration-complexity bounds. Furthermore, if the first DC component is differentiable, we present different iteration-complexity bounds and prove the full convergence of the sequence under the Kurdyka–Łojasiewicz property of the objective function. Some numerical experiments show that the nmBDCA outperforms the DCA, such as its monotone version.

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来源期刊
CiteScore
3.70
自引率
9.10%
发文量
91
审稿时长
10 months
期刊介绍: Computational Optimization and Applications is a peer reviewed journal that is committed to timely publication of research and tutorial papers on the analysis and development of computational algorithms and modeling technology for optimization. Algorithms either for general classes of optimization problems or for more specific applied problems are of interest. Stochastic algorithms as well as deterministic algorithms will be considered. Papers that can provide both theoretical analysis, along with carefully designed computational experiments, are particularly welcome. Topics of interest include, but are not limited to the following: Large Scale Optimization, Unconstrained Optimization, Linear Programming, Quadratic Programming Complementarity Problems, and Variational Inequalities, Constrained Optimization, Nondifferentiable Optimization, Integer Programming, Combinatorial Optimization, Stochastic Optimization, Multiobjective Optimization, Network Optimization, Complexity Theory, Approximations and Error Analysis, Parametric Programming and Sensitivity Analysis, Parallel Computing, Distributed Computing, and Vector Processing, Software, Benchmarks, Numerical Experimentation and Comparisons, Modelling Languages and Systems for Optimization, Automatic Differentiation, Applications in Engineering, Finance, Optimal Control, Optimal Design, Operations Research, Transportation, Economics, Communications, Manufacturing, and Management Science.
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