I'm trying to apply an nls function to data by year, so there will be a separate nls function for each year. All the years are broadly similar (exponential decay), but some years the nls() function fails with a "singular gradient" error.
data that is working:
good_data = data.frame(y = c(8.46,6.87,5.81,6.62,5.85,5.79,4.83,4.94,4.95,5.27,5.05,5.38,5.08,3.98), x = c(2,6,6,7,7,8,9,10,12,13,14,15,16,17))
data that is failing:
bad_data = data.frame(y = c(8.99,5.86,5.32,5.74,5.41,5.04,4.66,4.52,4.18,4.66,5.38,5.46,5.21,5.37,4.89), x = c(2,6,6,7,7,8,9,10,11,12,13,14,15,16,17))
fit = nls(y ~ SSasymp(x, Asym, R0, lrc), data = good_data)
To my eyes, the two sets of data look very similar. Is there some way I can diagnose why the one is failing and the other isn't? Is there something I can do to fix it?