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http://dx.doi.org/10.5762/KAIS.2015.16.9.5810

A Study on the Enterprise Value Analysis using AHP and Logit Regressions  

Gu, Seung-Hwan (Defense Agency for Technology and Quality)
Shin, Tack-Hyun (Department of Industrial & Information Systems Engineering, Seoul National University of Science and Technology)
Yuldashev, Zafar (Department of Industrial & Information Systems Engineering, Seoul National University of Science and Technology)
Publication Information
Journal of the Korea Academia-Industrial cooperation Society / v.16, no.9, 2015 , pp. 5810-5818 More about this Journal
Abstract
The dissertation presents the portfolio construction method using the score sheet so that general investors can utilize it easily. This study draws the significant variables to contribute the enterprise value and suggests the combined models by applying the single methodology, which private investors can easily utilize. The results of the research can be classified into 2 areas. Firstly, the significantly affecting variables were selected for analyzing the enterprise value. The variables and the method for the enterprise value analysis were studied from the existing researches to choose the optimal variables. The variables were identified by using AHP method and the structure equation method from the investigation of the previous researches. And the critical variables were added extracted from the common denominator of variables which the 3 grue investors used for their investment. The final variables identified are dividend yield, PER, PBR, PCR, EV/EBITDA, ROE, net income, sales growth rate, net current asset, debt ratio, current ratio, rate of operating profits, ratio of operating profit to net sales, ratio of net income to net sales, net profit to total assets, EPS growth rate, inventory turnover ratio, and receivables turnover. Second, the new methodologies for forecasting enterprise value modifying the existing methods were developed. The result of the Logistic regression analysis for forecasting showed that the equation could not be suitable as the accuracy with 91.98%.
Keywords
Enterprise Value; AHP; Logit Regressions; Investment Strategy;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
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