scholarly journals A Column-Generation and Branch-and-Cut Approach to the Bandwidth-Packing Problem

Author(s):  
Christine Villa ◽  
Karla Hoffman
Author(s):  
Yury Kochetov ◽  
Arteam Kondakov

We study a new variant of the bin packing problem with a color constraint. Given a finite set of items, each item has a set of colors. Each bin has a color capacity, the total number of colors for a bin is the unification of colors for its items and cannot exceed the bin capacity. We need to pack all items into the minimal number of bins. For this NP-hard problem we present approximability results and design a hybrid matheuristic based on the column generation technique. A hybrid VNS heuristic is applied to the pricing problem. The column generation method provides a lower bound and a core subset of the most promising bin patterns. Fast heuristics and exact solution for this core produce upper bounds. Computational experiments for test instances with number of items up to 500 illustrate the efficiency of the approach.


2007 ◽  
Vol E90-D (7) ◽  
pp. 1011-1017
Author(s):  
J. CHEN ◽  
Y. YANG ◽  
L. ZHOU

1996 ◽  
Vol 42 (9) ◽  
pp. 1277-1291 ◽  
Author(s):  
Kyungchul Park ◽  
Seokhoon Kang ◽  
Sungsoo Park

2020 ◽  
Vol 34 (02) ◽  
pp. 1593-1602
Author(s):  
Vishnu Suresh Lokhande ◽  
Shaofei Wang ◽  
Maneesh Singh ◽  
Julian Yarkony

In this paper, we introduce a new optimization approach to Entity Resolution. Traditional approaches tackle entity resolution with hierarchical clustering, which does not benefit from a formal optimization formulation. In contrast, we model entity resolution as correlation-clustering, which we treat as a weighted set-packing problem and write as an integer linear program (ILP). In this case, sources in the input data correspond to elements and entities in output data correspond to sets/clusters. We tackle optimization of weighted set packing by relaxing integrality in our ILP formulation. The set of potential sets/clusters can not be explicitly enumerated, thus motivating optimization via column generation. In addition to the novel formulation, we also introduce new dual optimal inequalities (DOI), that we call flexible dual optimal inequalities, which tightly lower-bound dual variables during optimization and accelerate column generation. We apply our formulation to entity resolution (also called de-duplication of records), and achieve state-of-the-art accuracy on two popular benchmark datasets. Our F-DOI can be extended to other weighted set-packing problems.


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