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Implemented PSO-NBC and PSO-SVM to Help Determine Status of Volcanoes
2019
Jurnal Penelitian Pos dan Informatika
This research is a continuation of previous research that applied the Naive Bayes classifier algorithm to predict the status of volcanoes in Indonesia based on seismic factors. There are five attributes used in predicting the status of volcanoes, namely the status of the normal, standby and alerts. The results Showed the accuracy of the resulted prediction was only 79.31%, or fell into fair classification. To overcome these weaknesses and in order to increase accuracy, optimization is done by
doi:10.17933/jppi.v9i2.198
fatcat:66idwdlrrbbyxcehszxubc3kqq