Anyone encountered this difficulty with
kernlab regression? It seems like it's losing some scaling factors or something, but perhaps I'm calling it wrong.
library(kernlab) df <- data.frame(x=seq(0,10,length.out=1000)) df$y <- 3*df$x + runif(1000) - 3 plot(df) res <- ksvm(y ~ x, data=df, kernel='vanilladot') lines(df$x, predict(res), col='blue', lwd=2)
With this toy example I can get reasonable results if I explicitly pass
newdata=df, but with my real data I've found no such workaround. Any insight?