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의사결정나무 기법을 이용한 노인들의 자살생각 예측모형 및 의사결정 규칙 개발A Development of Suicidal Ideation Prediction Model and Decision Rules for the Elderly: Decision Tree Approach

Other Titles
A Development of Suicidal Ideation Prediction Model and Decision Rules for the Elderly: Decision Tree Approach
Authors
김덕현유동희정대율
Issue Date
2019
Publisher
한국정보시스템학회
Keywords
Decision Tree; Data Mining; Balanced Data; Elderly Suicidal Ideation; Prediction Model; Decision Rules
Citation
정보시스템연구, v.28, no.3, pp 249 - 276
Pages
28
Indexed
KCI
Journal Title
정보시스템연구
Volume
28
Number
3
Start Page
249
End Page
276
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/10152
ISSN
1229-8476
2733-8770
Abstract
Purpose The purpose of this study is to develop a prediction model and decision rules for the elderly's suicidal ideation based on the Korean Welfare Panel survey data. By utilizing this data, we obtained many decision rules to predict the elderly's suicide ideation. Design/methodology/approach This study used classification analysis to derive decision rules to predict on the basis of decision tree technique. Weka 3.8 is used as the data mining tool in this study. The decision tree algorithm uses J48, also known as C4.5. In addition, 66.6% of the total data was divided into learning data and verification data. We considered all possible variables based on previous studies in predicting suicidal ideation of the elderly. Finally, 99 variables including the target variable were used. Classification analysis was performed by introducing sampling technique through backward elimination and data balancing. Findings As a result, there were significant differences between the data sets. The selected data sets have different, various decision tree and several rules. Based on the decision tree method, we derived the rules for suicide prevention. The decision tree derives not only the rules for the suicidal ideation of the depressed group, but also the rules for the suicidal ideation of the non-depressed group. In addition, in developing the predictive model, the problem of over-fitting due to the data imbalance phenomenon was directly identified through the application of data balancing. We could conclude that it is necessary to balance the data on the target variables in order to perform the correct classification analysis without over-fitting. In addition, although data balancing is applied, it is shown that performance is not inferior in prediction rate when compared with a biased prediction model.
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