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dc.contributor.advisor이동환-
dc.contributor.author김다예-
dc.creator김다예-
dc.date.accessioned2017-08-27T12:08:44Z-
dc.date.available2017-08-27T12:08:44Z-
dc.date.issued2017-
dc.identifier.otherOAK-000000137455-
dc.identifier.urihttp://dcollection.ewha.ac.kr/jsp/common/DcLoOrgPer.jsp?sItemId=000000137455en_US
dc.identifier.urihttps://dspace.ewha.ac.kr/handle/2015.oak/236352-
dc.description.abstractAccording to a survey by the female family department, the domestic penetration rate of smartphones has exceeded 80%. According to the results of the Future Creative Science Division together with the Korea Information Technology Promotion Agency, based on 2015, about 2.4% of smartphone users are high risk and 13.8% belong to a potential risk group. This is an increased figure than last year, and the social concern for smartphone poisoning in the future is expected to further increase. Especially, the poisoning tendency can be fatal as the age is lower, so youth smartphone poisoning can become a social problem. Therefore, in this research, we investigate how mental health condition of young people affects adolescent smartphone poisoning. In addition, we will construct a statistical model that can predict young people's smartphone poisoning and compare whether some models' predictive power is good. The analysis utilized the mental health survey data for 714 students in the junior high school located in Seoul in psychiatry at Seoul Polramé hospital. I examined the mental health scale that affects youth 's smartphone poisoning. In the analysis method for the prediction model, we used the MSE value by using linear regression, GAM, Support Vector Machine, neural network method, and compared which model has the best predictive power.;본 논문에서는 청소년들의 스마트폰 중독에 대한 특징에 대하여 살펴본 후, 여러 개의 예측 모형을 만들어 예측력을 비교했다. 제안된 모형 중 예측력이 가장 좋은 모형을 선택하여 어떤 것이 중요 변수로 사용되었는지 모형별로 살펴보았다. 그래서 청소년의 스마트폰 중독과 관련하여 성별로 차이가 있으며, SVR 모형의 예측력이 좋고 인터넷 중독 성향, 불안성과 공격적인 성향 등 변수가 높은 예측 기여도를 가짐을 알 수 있다.-
dc.description.tableofcontentsⅠ. Introduction 1 A. Research Background 1 B. Purpose of Research 2 Ⅱ. Model 3 A. Linear Regression 3 B. Generalized Addictive Model 5 C. Random Forest 7 D. Support Vector Regression 9 E. Neural Network 12 Ⅲ. Data Analysis 14 A. Data Description 14 1. Subject Characteristic 15 2. Variable Description 19 B. Data Analysis 21 1. Comparison RMSE of Models 22 2. Variable Importance 27 Ⅳ. Conclusion and Discussion 30 A. Summary and Discussion 30 B. Implications and Limitations 32 References 34 초록 35-
dc.formatapplication/pdf-
dc.format.extent815446 bytes-
dc.languageeng-
dc.publisher이화여자대학교 대학원-
dc.subject.ddc500-
dc.titleComparison of Prediction Models for Analyzing Smartphone Addition of Korean Adolescents-
dc.typeMaster's Thesis-
dc.title.translated한국 청소년들의 스마트폰 중독 예측을 위한 분석 모형 비교-
dc.format.page35 p.-
dc.identifier.thesisdegreeMaster-
dc.identifier.major대학원 통계학과-
dc.date.awarded2017. 2-
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