Apex Method: A New Scalable Iterative Method for Linear Programming

Author:

Sokolinsky Leonid B.1ORCID,Sokolinskaya Irina M.1ORCID

Affiliation:

1. School of Electronic Engineering and Computer Science, South Ural State University (National Research University), 76, Lenin Prospekt, 454080 Chelyabinsk, Russia

Abstract

The article presents a new scalable iterative method for linear programming called the “apex method”. The key feature of this method is constructing a path close to optimal on the surface of the feasible region from a certain starting point to the exact solution of a linear programming problem. The optimal path refers to a path of the minimum length according to the Euclidean metric. The apex method is based on the predictor—corrector framework and proceeds in two stages: quest (predictor) and target (corrector). The quest stage calculates a rough initial approximation of the linear programming problem. The target stage refines the initial approximation with a given precision. The main operation used in the apex method is an operation that calculates the pseudoprojection, which is a generalization of the metric projection to a convex closed set. This operation is used both in the quest stage and in the target stage. A parallel algorithm using a Fejér mapping to compute the pseudoprojection is presented. An analytical estimation of the parallelism degree of this algorithm is obtained. AlsoAdditionally, an algorithm implementing the target stage is given. The convergence of this algorithm is proven. An experimental study of the scalability of the apex method on a cluster computing system is described. The results of applying the apex method to solve problems from the Netlib-LP repository are presented.

Funder

RSF

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference57 articles.

1. Sokolinsky, L.B., and Sokolinskaya, I.M. (2020). Proceedings of the 2020 Global Smart Industry Conference, GloSIC, Chelyabinsk, Russia, 17–19 November 2020, IEEE.

2. Big data and its technical challenges;Jagadish;Commun. ACM,2014

3. Making Big Sense From Big Data;Hartung;Front. Big Data,2018

4. On the Solution of Linear Programming Problems in the Age of Big Data;Sokolinsky;Proceedings of the Parallel Computational Technologies. PCT 2017. Communications in Computer and Information Science, Kazan, Russia, 3–7 April 2017,2017

5. Chung, W. (2015). Proceedings of the 2015 IEEE International Conference on Industrial Engineering and Engineering Management (IEEM), Singapore, 6–9 December 2015, IEEE.

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