1

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))

attempted nls:

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?

Thanks

  • You appear to have other relevant variables beyond x and y. Please post fuller good and bad data. Also post full error message – Parfait Mar 15 at 1:42
1

Below we show 2 approaches to this. If you want to do this automatically you might want to try a straight foward fit and if that fails then try (2) and if that fails try (1). If they all fail then the data may not really follow the model and should not be fit with it.

1) If you add more points by doing a spline fit first then it converges:

sp <- with(bad_data, spline(x, y))
fit2sp <- nls(y ~ SSasymp(x, Asym, R0, lrc), data = sp)
fit2sp

giving:

Nonlinear regression model
  model: y ~ SSasymp(x, Asym, R0, lrc)
   data: sp
   Asym      R0     lrc 
 5.0101 22.1915 -0.2958 
 residual sum-of-squares: 5.365

Number of iterations to convergence: 0 
Achieved convergence tolerance: 1.442e-06

2) Another approach if the data are similar is to use the starting values from a prior successful fit.

fit1 <- nls(y ~ SSasymp(x, Asym, R0, lrc), data = good_data)
fit2 <- nls(y ~ SSasymp(x, Asym, R0, lrc), data = bad_data, start = coef(fit1))
fit2

giving:

Nonlinear regression model
  model: y ~ SSasymp(x, Asym, R0, lrc)
   data: bad_data
   Asym      R0     lrc 
 4.9379 15.5472 -0.7369 
 residual sum-of-squares: 2.245

Number of iterations to convergence: 10 
Achieved convergence tolerance: 7.456e-06

Below we plot both solutions:

plot(y ~ x, bad_data)
points(y ~ x, sp, pch = 20)
lines(fitted(fit2sp) ~ x, sp, col = "red")
lines(fitted(fit2) ~ x, bad_data, col = "blue", lty = 2)
legend("topright", c("data", "spline", "fit2sp", "fit2"), 
  pch = c(1, 20, NA, NA), lty = c(NA, NA, 1, 2), 
  col = c("black", "black", "red", "blue"))

screenshot

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