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Author
Rajoriya Deepika (Dr. Harisingh Gour Centeral University, Sagar (M.P.) India), Shukla Diwakar (Dr. Harisingh Gour Central University)
Title
Under Military War Weapon Support the Economic Bond Level Estimation Using Generalized Petersen Graph with Imputation
Source
Statistics in Transition, 2023, vol. 24, nr 1 Special Issue, s. 295-320, tab., rys., bibliogr. 21 poz.
Keyword
Estymatory, Konflikty zbrojne, Obligacje, Estymacja
Estimators, Armed conflicts, Bonds, Estimation
Note
summ.
Country
Ukraina
Ukraine
Abstract
Several countries of the world are involved in mutual and collaborative business of military equipments, weapons in terms of their production, sales, technical maintenance, training and services. As a consequence, manufacturing of boms, rockets, missiles and other ammunitions have taken structured and smooth shape to help others where and when needed. Often the military support among countries remain open for information to the media, but sometime remain secret due to the national security and international political pressure. Such phenomenon (hidden or open support ) is a part of military supply chain and could be modeled like a Petersen graph considering vertices as countries and edges as economic bonds. For a large graphical structure, without sampling, it is difficult to find out average economic bonding (open & secret) between any pair of countries involved in the military business or support. This paper presents a sample based estimation methodology for estimating the mean economic bond value among countries involved in the military support or business. Motivation to the problem is derived from current Russia-Ukraine war situation and a kind of hidden support to war by NATO countries. A node sampling procedure is proposed whose bias, mean-squared error and other properties are derived. Results are supported with empirical studies. Findings are compared with particular cases and confidence intervals are used as a basic tool of comparison. Pattern imputation is used together with a new proposal of CIImputation method who has been proved useful for filling the missing value, specially when secret economic support data from involved countries found missing. The current undergoing war between Ukraine and Russia and secret weapon, economic support from NATO countries is an application of the proposed methodology contained in this paper. (original abstract)
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Bibliography
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Cited by
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ISSN
1234-7655
Language
eng
URI / DOI
http://dx.doi.org/10.59170/stattrans-2023-016
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