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http://dx.doi.org/10.9721/KJFST.2019.51.2.176

Analysis of dieting practices in 2016 using big data  

Jung, Eun-Jin (Department of Food & Nutrition, DongDuk Women's University)
Chang, Un-Jae (Department of Food & Nutrition, DongDuk Women's University)
Jo, Kyungae (College of Health Science, Korea University)
Publication Information
Korean Journal of Food Science and Technology / v.51, no.2, 2019 , pp. 176-181 More about this Journal
Abstract
The aim of this study was to analyze dieting practices and tendencies in 2016 using big data. The keywords related to diet were collected from the portal site Naver and analyzed through simple frequency, N-gram, keyword network, and analysis of seasonality. The results showed that exercise had the highest frequency in simple frequency analysis. However, diet menu appeared most frequently in N-gram analysis. In addition, analysis of seasonality showed that the interest of subjects in diet increased steadily from February to July and peaked in October 2016. The monthly frequency of the keyword highfat diet was highest in October, because that showed the 'Low Carbohydrate High Fat' TV program. Although diet showed a certain pattern on a yearly basis, the emergence of new trendy diets in mass media also affects the pattern of diet. Therefore, it is considered that continuous monitoring and analysis of diet is needed rather than periodic monitoring.
Keywords
big data; diet menu; exercise; commercial diet; continuous monitoring;
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Times Cited By KSCI : 6  (Citation Analysis)
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