I have a data set of complex numbers, and I'd like to be able to find parameters that best fit the data. Can you fit data in complex numbers using leastsq as implemented by scipy in python?

For example, my code is something like this:

```
import cmath
from scipy.optimize import leastsq
def residuals(p,y,x):
L,Rs,R1,C=p
denominator=1+(x**2)*(C**2)*(R1**2)
sim=complex(Rs+R1/denominator,x*L-(R1**2)*x*C/denominator)
return(y-sim)
z=<read in data, store as complex number>
x0=np.array[1, 2, 3, 4]
res = leastsq(residuals,x0, args=(z,x))
```

However, `residuals`

doesn't like working with my complex number, I get the error:

```
File "/tmp/tmp8_rHYR/___code___.py", line 63, in residuals
sim=complex(Rs+R1/denominator,x*L-(R1**_sage_const_2 )*x*C/denominator)
File "expression.pyx", line 1071, in sage.symbolic.expression.Expression.__complex__ (sage/symbolic/expression.cpp:7112)
TypeError: unable to simplify to complex approximation
```

I'm guessing that I need to work only with floats/doubles rather than complex numbers. In that case, how can I evaluate the real and complex parts separately and then lump them back together into a single error metric for `residuals`

to return?