Evaluating the impact of COVID-19 on ex-vessel prices using time-series analysis
The spread of coronavirus disease 2019 (COVID-19) and subsequent lockdown measures have impacted economies and industries worldwide. The fisheries industry witnessed a sharp decline in demand and a slump in fish prices due to its dependence on the food service industry. It is important to quantitati...
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Veröffentlicht in: | Fisheries science 2022, Vol.88 (1), p.191-202 |
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description | The spread of coronavirus disease 2019 (COVID-19) and subsequent lockdown measures have impacted economies and industries worldwide. The fisheries industry witnessed a sharp decline in demand and a slump in fish prices due to its dependence on the food service industry. It is important to quantitatively assess those fish species affected most and the extent of the pandemic’s impact on them, to take specific countermeasures. We propose a time-series analysis as an alternative to the current practice of using ad hoc year-on-year comparisons. Although the pandemic makes it difficult to construct a counterfactual approach due to the lack of an appropriate control group, we use time-series forecasting to simulate normal conditions using pre-pandemic data. In Tokyo, the unit price of fish species that were negatively impacted by the food services industry dropped by 12.65% to 14.64%, and by 26.08% to 28.22% after the declaration of a state of emergency. Seasonality, short weekly cycles, and short-term market trends are factors that affect the price of fish. Species-specific impact estimates related to the COVID-19 pandemic can allow policymakers to implement recovery measures in a more targeted and effective manner. The results of our analysis can increase fishers’ and policymakers’ awareness of the usefulness of economic analyses and incentivize them to release data to establish a system to accumulate and analyze data strategically for urgent and appropriate interventions in the fisheries industry. |
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The fisheries industry witnessed a sharp decline in demand and a slump in fish prices due to its dependence on the food service industry. It is important to quantitatively assess those fish species affected most and the extent of the pandemic’s impact on them, to take specific countermeasures. We propose a time-series analysis as an alternative to the current practice of using ad hoc year-on-year comparisons. Although the pandemic makes it difficult to construct a counterfactual approach due to the lack of an appropriate control group, we use time-series forecasting to simulate normal conditions using pre-pandemic data. In Tokyo, the unit price of fish species that were negatively impacted by the food services industry dropped by 12.65% to 14.64%, and by 26.08% to 28.22% after the declaration of a state of emergency. Seasonality, short weekly cycles, and short-term market trends are factors that affect the price of fish. Species-specific impact estimates related to the COVID-19 pandemic can allow policymakers to implement recovery measures in a more targeted and effective manner. The results of our analysis can increase fishers’ and policymakers’ awareness of the usefulness of economic analyses and incentivize them to release data to establish a system to accumulate and analyze data strategically for urgent and appropriate interventions in the fisheries industry.</description><identifier>ISSN: 0919-9268</identifier><identifier>EISSN: 1444-2906</identifier><identifier>DOI: 10.1007/s12562-021-01574-x</identifier><identifier>PMID: 35095191</identifier><language>eng</language><publisher>Tokyo: Springer Japan</publisher><subject>Biomedical and Life Sciences ; Coronaviruses ; COVID-19 ; Economic analysis ; Economics ; Emergency management ; Fish ; Fish & Wildlife Biology & Management ; Fisheries ; Fishers ; Fishery industry ; Food ; Food industry ; Food Science ; Food service ; Foods ; Freshwater & Marine Ecology ; Industry ; Life Sciences ; Original ; Original Article ; Pandemics ; Seasonal variations ; Seasonality ; Species ; Time series ; Viral diseases ; Weekly</subject><ispartof>Fisheries science, 2022, Vol.88 (1), p.191-202</ispartof><rights>The Author(s) 2021. corrected publication 2023</rights><rights>Japanese Society of Fisheries Science 2021.</rights><rights>The Author(s) 2021. corrected publication 2023. 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The fisheries industry witnessed a sharp decline in demand and a slump in fish prices due to its dependence on the food service industry. It is important to quantitatively assess those fish species affected most and the extent of the pandemic’s impact on them, to take specific countermeasures. We propose a time-series analysis as an alternative to the current practice of using ad hoc year-on-year comparisons. Although the pandemic makes it difficult to construct a counterfactual approach due to the lack of an appropriate control group, we use time-series forecasting to simulate normal conditions using pre-pandemic data. In Tokyo, the unit price of fish species that were negatively impacted by the food services industry dropped by 12.65% to 14.64%, and by 26.08% to 28.22% after the declaration of a state of emergency. Seasonality, short weekly cycles, and short-term market trends are factors that affect the price of fish. Species-specific impact estimates related to the COVID-19 pandemic can allow policymakers to implement recovery measures in a more targeted and effective manner. The results of our analysis can increase fishers’ and policymakers’ awareness of the usefulness of economic analyses and incentivize them to release data to establish a system to accumulate and analyze data strategically for urgent and appropriate interventions in the fisheries industry.</description><subject>Biomedical and Life Sciences</subject><subject>Coronaviruses</subject><subject>COVID-19</subject><subject>Economic analysis</subject><subject>Economics</subject><subject>Emergency management</subject><subject>Fish</subject><subject>Fish & Wildlife Biology & Management</subject><subject>Fisheries</subject><subject>Fishers</subject><subject>Fishery industry</subject><subject>Food</subject><subject>Food industry</subject><subject>Food Science</subject><subject>Food service</subject><subject>Foods</subject><subject>Freshwater & Marine Ecology</subject><subject>Industry</subject><subject>Life Sciences</subject><subject>Original</subject><subject>Original 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COVID-19 on ex-vessel prices using time-series analysis</atitle><jtitle>Fisheries science</jtitle><stitle>Fish Sci</stitle><addtitle>Fish Sci</addtitle><date>2022</date><risdate>2022</risdate><volume>88</volume><issue>1</issue><spage>191</spage><epage>202</epage><pages>191-202</pages><issn>0919-9268</issn><eissn>1444-2906</eissn><abstract>The spread of coronavirus disease 2019 (COVID-19) and subsequent lockdown measures have impacted economies and industries worldwide. The fisheries industry witnessed a sharp decline in demand and a slump in fish prices due to its dependence on the food service industry. It is important to quantitatively assess those fish species affected most and the extent of the pandemic’s impact on them, to take specific countermeasures. We propose a time-series analysis as an alternative to the current practice of using ad hoc year-on-year comparisons. Although the pandemic makes it difficult to construct a counterfactual approach due to the lack of an appropriate control group, we use time-series forecasting to simulate normal conditions using pre-pandemic data. In Tokyo, the unit price of fish species that were negatively impacted by the food services industry dropped by 12.65% to 14.64%, and by 26.08% to 28.22% after the declaration of a state of emergency. Seasonality, short weekly cycles, and short-term market trends are factors that affect the price of fish. Species-specific impact estimates related to the COVID-19 pandemic can allow policymakers to implement recovery measures in a more targeted and effective manner. The results of our analysis can increase fishers’ and policymakers’ awareness of the usefulness of economic analyses and incentivize them to release data to establish a system to accumulate and analyze data strategically for urgent and appropriate interventions in the fisheries industry.</abstract><cop>Tokyo</cop><pub>Springer Japan</pub><pmid>35095191</pmid><doi>10.1007/s12562-021-01574-x</doi><tpages>12</tpages><orcidid>https://orcid.org/0000-0002-1833-3036</orcidid><oa>free_for_read</oa></addata></record> |
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subjects | Biomedical and Life Sciences Coronaviruses COVID-19 Economic analysis Economics Emergency management Fish Fish & Wildlife Biology & Management Fisheries Fishers Fishery industry Food Food industry Food Science Food service Foods Freshwater & Marine Ecology Industry Life Sciences Original Original Article Pandemics Seasonal variations Seasonality Species Time series Viral diseases Weekly |
title | Evaluating the impact of COVID-19 on ex-vessel prices using time-series analysis |
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