Given a dissimilarity matrix, the metric nearness problem is to find the nearest matrix of distances that satisfy the triangle inequalities. This problem has wide applications, such as sensor networks, image processing, and so on. But it is of great challenge even to obtain a moderately accurate solution due to the $O(n^{3})$ metric constraints and the nonsmooth objective function which is usually a weighted $\ell_{p}$ norm based distance. In this paper, we propose a delayed constraint generation method with each subproblem solved by the semismooth Newton based proximal augmented Lagrangian method (PALM) for the metric nearness problem. Due to the high memory requirement for the storage of the matrix related to the metric constraints, we take advantage of the special structure of the matrix and do not need to store the corresponding constraint matrix. A pleasing aspect of our algorithm is that we can solve these problems involving up to $10^{8}$ variables and $10^{13}$ constraints. Numerical experiments demonstrate the efficiency of our algorithm. In theory, firstly, under a mild condition, we establish a primal-dual error bound condition which is very essential for the analysis of local convergence rate of PALM. Secondly, we prove the equivalence between the dual nondegeneracy condition and nonsingularity of the generalized Jacobian for the inner subproblem of PALM. Thirdly, when $q(\cdot)=\|\cdot\|_{1}$ or $\|\cdot\|_{\infty}$, without the strict complementarity condition, we also prove the equivalence between the the dual nondegeneracy condition and the uniqueness of the primal solution.
翻译:鉴于差异性矩阵, 测量近距离问题在于找到最接近的距离矩阵, 以满足三角形的不平等。 这个问题有广泛的应用, 比如传感器网络、 图像处理等。 但是, 即使是由于美元( {{{{} 3} 美元) 的衡量限制和非移动目标功能, 通常是一个加权 $( ell}}} p} 标准距离, 衡量距离差数, 衡量距离差数, 衡量距离差数最接近的准moth 牛顿增产拉格朗加法( PALM ) 解决的延迟制约生成方法, 这个问题也有广泛的应用。 但是, 由于存储与指标限制有关的矩阵的存储需要高度的记忆要求, 我们利用矩阵的特殊结构, 不需要储存相应的约束矩阵。 我们算法的一个令人愉快的方面是, 我们可以解决这些问题, 高达 10 ⁇ 美元( ) 变量和 10 美元( } 美元( ) 制约 。 numerical 实验显示了我们的算法的效率。 首先, 在一种温的状态下, 我们建立一种原始- ral = ralalal ralal= ( ral) ralalalalal) roal) roalalality rolation ro) roal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal deal dre der 。