RBF SVM on a complex dataset
Calculate the average accuracy for a RBF kernel SVM using 100 different training/test partitions of the complex dataset you generated in the first lesson of this chapter. Use default settings for the parameters. The e1071 library has been preloaded and the dataset is available in the dataframe df. Use random 80/20 splits of the data in df when creating training and test datasets for each iteration.
Bu egzersiz
Support Vector Machines in R
kursunun bir parçasıdırUygulamalı interaktif egzersiz
Bu örnek kodu tamamlayarak bu egzersizi bitirin.
#create vector to store accuracies and set random number seed
accuracy <- rep(NA, ___)
set.seed(2)