Randall Romero Aguilar, PhD
This demo is based on the original Matlab demo accompanying the Computational Economics and Finance 2001 textbook by Mario Miranda and Paul Fackler.
Original (Matlab) CompEcon file: demdif02.m
Running this file requires the Python version of CompEcon. This can be installed with pip by running
!pip install compecon --upgrade
Last updated: 2022-Oct-22
Demonstrates accuracy of one- and two-sided finite-difference derivatives of $e^x$ at $x=1$ as a function of step size $h$.
import numpy as np
import matplotlib.pyplot as plt
plt.style.use('seaborn-dark')
n, x = 18, 1.0
c = np.linspace(-15,0,n)
h = 10 ** c
exp = np.exp
eps = np.finfo(float).eps
def deriv_error(l, u):
dd = (exp(u) - exp(l)) / (u-l)
return np.log10(np.abs(dd - exp(x)))
d1 = deriv_error(x, x+h)
e1 = np.log10(eps**(1/2))
d2 = deriv_error(x-h, x+h)
e2 = np.log10(eps**(1/3))
fig, ax = plt.subplots()
ax.plot(c,d1, label='One-Sided')
ax.plot(c,d2, label='Two-Sided')
ax.axvline(e1, color='C0', linestyle=':')
ax.axvline(e2, color='C1',linestyle=':')
ax.set(title='Error in Numerical Derivatives',
xlabel='$\log_{10}(h)$',
ylabel='$\log_{10}$ Approximation Error',
xlim=[-15, 0], xticks=np.arange(-15,5,5),
ylim=[-15, 5], yticks=np.arange(-15,10,5)
)
ax.annotate('$\sqrt{\epsilon}$', (e1+.25, 2), color='C0')
ax.annotate('$\sqrt[3]{\epsilon}$', (e2 +.25, 2),color='C1')
ax.legend(loc='lower left');