问题
here's my problem: I am trying to use numpy to compute (numerical) derivatives, but I am finding some problems in the value the function numpy.diff returns (and numpy.gradient as well). What I find is that the values are totally wrong! here's a code sample:
import numpy as np
x = np.linspace(-5, 5, 1000)
y = x**2
yDiff = np.diff(y)
print y[0], yDiff[0]
The output of this script is:
25.0 -0.0999998997997
where the first value is right, the second is exactly 100 times smaller than the one it should be (considering approximations)! I have made different attempts and this is not a problem related to the boundaries of the function, and this 100 factor seems systematic... Can this be related to some normalization np.diff is doing? Or perhaps I am just missing something important without noticing? Thanks for the help
回答1:
np.diff
doesn't calculate the derivative it just calulates finite differences; you have to account for the spacing yourself. Try
np.diff(y) / (x[1] - x[0])
Btw., np.linspace
has a retstep
keyword that is convenient in this context:
x, dx = np.linspace(-5, 5, 100, retstep=True)
...
np.diff(y) / dx
来源:https://stackoverflow.com/questions/42737619/output-of-numpy-diff-is-wrong