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Comparison of Kernel Function on Support Vector Machine in Classification of Childbirth
2019
Mantik: Jurnal Matematika
The maternal mortality rate during childbirth can be reduced through the efforts of the medical team in determining the childbirth process that must be undertaken immediately. Machine learning in terms of classifying childbirth can be a solution for the medical team in determining the childbirth process. One of the classification methods that can be used is the Support Vector Machine (SVM) method which is able to determine a hyperplane that will form a good decision boundary so that it is able
doi:10.15642/mantik.2019.5.2.90-99
fatcat:nu2mwmktkzf6rpqstzndlarkty