KMID : 0613620230430020029
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Health Social Welfare Review 2023 Volume.43 No. 2 p.29 ~ p.47
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Analysis of Issues on COVID-19 Blues Using Big data
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Kim Yeon-Jung
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Abstract
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The purpose of this study was to analyze big data related to the ¡°COVID-19 blues¡± to explore major issues and public response. The data were collected using web crawling from January 2020 through March 2021 and analyzed using text mining analysis. The results indicated that the main keywords related to Corona blues were ¡®overcoming,¡¯ ¡®anxiety,¡¯ ¡®person,¡¯ ¡®mind,¡¯ ¡®prolonged,¡¯ ¡®symptom,¡¯ ¡®stress,¡¯ and ¡®sequela.¡¯ The main N-gram keywords in the data were depression-anxiety, depression-overcoming, and corona-sequela. In relation to COVID-19 blues, words with high co-occurrence frequencies were anxiety, blue, and depression. Our keyword correlation analysis found that the words most related to ¡®corona¡¯ were ¡®blue¡¯, ¡®symptoms¡¯, and ¡®restoration¡¯, and the words most related to ¡®blues¡¯ were ¡®depression¡¯, ¡®friend¡¯, and ¡®thought¡¯. Topic modeling indicated that 10 topics were ¡®confusion due to working from home¡¯, ¡®nearby mental health services¡¯, ¡®symptoms of COVID-19 blues¡¯, ¡®transition to depression¡¯, ¡®withdrawal in interpersonal relationships¡¯, ¡®youth academic turmoil¡¯, ¡®psychological difficulties of youth¡¯, ¡®the aftereffects of COVID-19¡¯, ¡®birthday blues¡¯, and ¡®weight gain¡¯. Big data analysis revealed the need for more inclusive strategies of mental support for COVID-19 blues. Implications for intervention and recommendations for further research are provided.
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KEYWORD
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COVID-19 Blues, Big Data, Text Mining
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