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The Degree of Association between Traditional Markets and Related Major Factors in Korea

The Journal of Distribution Science / The Journal of Distribution Science, (P)1738-3110; (E)2093-7717
2016, v.14 no.7, pp.5-14
https://doi.org/https://doi.org/10.15722/jds.14.7.201607.5
Jeong, Dong-Bin
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Abstract

Purpose - This paper studies if types of markets have an association with several variables such as occupation, district, sales, employee, administrative district by a lessor, area in rental building and so on. Three attributes of markets can be general commercial zones, central commercial zones and traditional markets. Furthermore, we can investigate the degree of association by calculating the numerical strength and visualizing their distances on two-dimensional plane, once the association exists between them. Research design, data, and methodology - This work is performed by the 2013 report presented with Small Businessmen Promotion Institute in Korea and used by a chi-squared test and correspondence analysis by using IBM SPSS 23.0. Results - The results show that types of markets, including traditional markets, have an association with variables considered in this paper, and we can obtain the detailed associations between attributes of corresponding variables by inspecting two-dimensional plane. Conclusions - This study suggests that government authority and local autonomy can make strategies to vitalize traditional markets and to get win-win relationships among several types of markets by looking over our findings.

keywords
Association, Chi-squared Test, Correspondence Analysis, Traditional Markets

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