A Study on the Numerical Approach for Industrial Life Cycle: Empirical Evidence from Korea

The industrial life cycle theory was extended to the product life cycle theory and the corporate life cycle theory, but a conceptual life cycle was presented, and quantitative empirical evidence for this was insufficient. It is intended to improve appropriate resource planning and resource allocatio...

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Bibliographic Details
Published inThe Journal of Asian finance, economics, and business Vol. 8; no. 5; pp. 667 - 678
Main Authors LEE, Kangsun, CHOI, Kyujin, CHO, Daemyeong
Format Journal Article
LanguageKorean
Published 한국유통과학회 30.05.2021
Korea Distribution Science Association
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Summary:The industrial life cycle theory was extended to the product life cycle theory and the corporate life cycle theory, but a conceptual life cycle was presented, and quantitative empirical evidence for this was insufficient. It is intended to improve appropriate resource planning and resource allocation by quantitatively predicting the industrial cycle and its position (age) in the cycle. Human resources, tangible assets, and industrial output analysis were conducted based on 28 years of actual data of 39 industries in Korea by applying the Gompertz model, which is a population ecology prediction model. By predicting with the Gompertz model, the coefficient of determination R2 value was 97% or more, confirming the high suitability with the actual cumulative sales value of the industry. A numerical model for calculating the life cycle of each industry, calculating the saturation of input resources for each industry, and diagnosing the financial stability of the industry was presented. These results will contribute to the decision-making of industrial policy officers for budget planning appropriately for each stage of industry development. Future research will apply the numerical model of this study to foreign national industries, complete an inter-industry convergence diagnostic model (e.g. ease of convergence, suitability of convergence, etc.) for renewal of fading industries.
Bibliography:KISTI1.1003/JNL.JAKO202112748675142
ISSN:2288-4637
2288-4645