This paper aims to propose an efficient numerical method for the most challenging problem known as the robust Euclidean embedding (REE) in the family of multi-dimensional scaling (MDS). The problem is notoriously known to be nonsmooth, nonconvex and its objective is non-Lipschitzian. We first explain that the semidefinite programming (SDP) relaxations and Euclidean distance matrix (EDM) approach, popular for other types of problems in the MDS family, failed to provide a viable method for this problem. We then propose a penalized REE (PREE), which can be economically majorized. We show that the majorized problem is convex provided that the penalty parameter is above certain threshold. Moreover, it has a closed-form solution, resulting in an ...
One of the challenging problems in collaborative position localization arises when the distance meas...
We derive a robust primal-dual interior-point algorithm for a semidefinite programming, SDP, relaxa...
One of the challenging problems in collaborative position localization arises when the distance meas...
This thesis aims to propose an efficient numerical method for a historically popular problem, multi-...
Multidimensional scaling (MDS) is a method that maps a set of observations into low dimensional spac...
© 2013, Springer-Verlag Berlin Heidelberg and Mathematical Optimization Society. Euclidean distance...
Euclidean distance embedding appears in many high-profile applications including wireless sensor net...
Abstract. Classical multidimensional scaling only works well when the noisy distances observed in a ...
Classical multidimensional scaling only works well when the noisy distances observed in a high dimen...
This thesis is an accumulation of work regarding a class of constrained Euclidean Distance Matrix (E...
Classical multidimensional scaling only works well when the noisy distances observed in a high dimen...
The fundamental problem of distance geometry involves the characterization and study of sets of poin...
The classical Multi-Dimensional Scaling (cMDS) has become a cornerstone for analyzing metric dissimi...
Sensor Network Localization (SNL) is a general framework that generates a set of embedding points in...
Abstract. The additive constant problem has a long history in multi-dimensional scaling and it has r...
One of the challenging problems in collaborative position localization arises when the distance meas...
We derive a robust primal-dual interior-point algorithm for a semidefinite programming, SDP, relaxa...
One of the challenging problems in collaborative position localization arises when the distance meas...
This thesis aims to propose an efficient numerical method for a historically popular problem, multi-...
Multidimensional scaling (MDS) is a method that maps a set of observations into low dimensional spac...
© 2013, Springer-Verlag Berlin Heidelberg and Mathematical Optimization Society. Euclidean distance...
Euclidean distance embedding appears in many high-profile applications including wireless sensor net...
Abstract. Classical multidimensional scaling only works well when the noisy distances observed in a ...
Classical multidimensional scaling only works well when the noisy distances observed in a high dimen...
This thesis is an accumulation of work regarding a class of constrained Euclidean Distance Matrix (E...
Classical multidimensional scaling only works well when the noisy distances observed in a high dimen...
The fundamental problem of distance geometry involves the characterization and study of sets of poin...
The classical Multi-Dimensional Scaling (cMDS) has become a cornerstone for analyzing metric dissimi...
Sensor Network Localization (SNL) is a general framework that generates a set of embedding points in...
Abstract. The additive constant problem has a long history in multi-dimensional scaling and it has r...
One of the challenging problems in collaborative position localization arises when the distance meas...
We derive a robust primal-dual interior-point algorithm for a semidefinite programming, SDP, relaxa...
One of the challenging problems in collaborative position localization arises when the distance meas...