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http://dx.doi.org/10.12939/FBA.2022.53.4.015

Price Stabilization Effect of the Fisheries Outlook Project  

Sang-Ho Lee (Department of Food Economics and Services, YeungNam Univsersity)
Won-Ho Chung (Department of Food and Resource Economics, Pusan National University)
Publication Information
The Journal of Fisheries Business Administration / v.53, no.4, 2022 , pp. 15-26 More about this Journal
Abstract
This paper analyzed the price stabilization before and after the fisheries outlook project for seaweed, flatfish, and abalone. First, the stabilization effect was analyzed through the price variation coefficient before and after the observation project. In terms of the variation coefficient, there was no effect that the price was stabilized through the seaweed outlook project. However, it can be seen that flatfish and abalone have a price-stabilizing effect. Second, as a result of analyzing the price stabilization effect through the improved ARMA-T-GARCH model, it was confirmed that seaweed was not statistically significant while flatfish and abalone had a price stabilization effect by statistically significantly reducing volatility of real prices after the introduction of the fisheries outlook project. Third, as a result of analyzing the factors affecting price stability, it was found that the price of seaweed was stabilized after the WTO, but the Japanese earthquake expanded the price volatility. In the case of flatfish, it was analyzed that the price stabilized after the WTO and the Great Japanese Earthquake. Finally, the price of abalone has stabilized since the WTO and the Great Japanese Earthquake.
Keywords
Price Stabilization; Korean Fisheries Outlook Project; Price Variation Coefficient; ARMA-T-GARCH Model;
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