Comparison of main characteristics of food insecurity using classification Tree and Random Forest
Date
2022-10-31Author
RAMADHANI, E
SARTONO, B
HADI, A F
‘UFA, S
AKHDANSYAH, T
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Show full item recordAbstract
Since the emerging of big data era, the information and data are 
grown rapidly. It requires us to have ability to extract the knowledge and 
information that consisted in this explosion of the data. One of way that 
can be used for this purpose is by using machine learning method. One of 
purpose of machine learning implementation is to conduct classification 
analysis and to identify variable importance that contribute in the research. 
It’s conducted the comparative study between two machine learning 
classification methods named classification tree and random forest method. 
This study is implemented on Indonesian Socioeconomic Survey 
(SUSENAS) 2020 in Aceh Province. The purpose of the study is to 
identify the optimum method between both and to identify the 
characteristics of food insecure household. The optimum method obtained 
by comparing the AUC value. The results obtained is random forest 
outperformed classification tree with the AUC value of random forest 
method is 0,718 and classification tree method is 0,668. The rank of 
variable importance of the optimum method is the type of cooking fuel 
used in the household, the area of house floor, education level of head of 
household, number of savers in a household, and the type of house floor.
Collections
- LSP-Jurnal Ilmiah Dosen [7430]