Full Citation
Title: Data Analytics: A Demographic and Socioeconomic Analysis of American Cigarette Smoking
Citation Type: Book, Section
Publication Year: 2019
ISBN: 978-3-030-22867-5
ISSN: 2194-5357
DOI:
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Abstract: This study attempts to model smoking behavior in the United States using Current Population Survey data from 2010 and 2011. An array of demographic and socioeconomic variables is used in an effort to explain smoking behavior from roughly 139,000 individuals. Two regression techniques are employed to analyze the data. These methods found that individuals with children are more likely to smoke than individuals without children; females are less likely to smoke than males; Hispanics, blacks, and Asians are all less likely to smoke than whites; divorcees and widows are more likely to smoke than single individuals; married individuals are less likely to smoke than singles; retired individuals are less likely to smoke than working ones; unemployed individuals are more likely to smoke than working ones; and as education level increases after high school graduation, smoking rates decrease. Finally, it is recommended that encouraging American children to pursue higher education may be the most effective way to minimize cigarette smoking.
Url: https://link.springer.com/chapter/10.1007/978-3-030-22868-2_11
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Authors: Kor, Ah-Lian; Reavis, Mitchell; Lazarevski, Sanela
Editors: Arai, Kohei; Bhatia, Rahul; Kapoor, Supriya
Pages: 145-156
Volume Title: Intelligent Computing Proceedings of the 2019 Computing Conference
Publisher: Springer
Publisher Location: Switzerland
Volume: 998-2
Edition:
Data Collections: IPUMS CPS
Topics: Health, Race and Ethnicity
Countries: Switzerland, United Kingdom