高级编程技术第十五次作业 Matplotlib

Exercise 11.1: Plotting a function
Plot the function

f ( x ) = s i n 2 ( x 2 ) e x 2

over the interval [ 0 , 2 ] . Add proper axis labels, a title, etc.

import numpy
import matplotlib.pyplot as plt  

x = numpy.linspace(0, 2, 100)  
y = numpy.square(numpy.sin(x - 2)) * numpy.exp(-x * x) 

plt.plot(x, y)
plt.title('f(x)')
plt.xlabel('x')
plt.ylabel('y')
plt.show()

Exercise 11.2: Data
Create a data matrix X with 20 observations of 10 variables. Generate a vector b with parameters Then generate the response vector y = X b + z where z is a vector with standard normally distributed variables.
Now (by only using y and X ), find an estimator for b , by solving

b ^ = a r g   min b X b y 2

Plot the true parameters b and estimated parameters b ^ . See Figure 1 for an example plot.

import matplotlib.pyplot as plt  
import numpy
import random

X = numpy.random.randn(20, 10)
z = numpy.random.normal(size = (20, 1))
b1 = numpy.random.rand(10, 1)
y = numpy.dot(X, b1) + z
x = numpy.linspace(-1, 1, 10)  
b2 = numpy.array(numpy.linalg.lstsq(X, y, rcond = -1)[0])  
plt.scatter(x, b1, c = 'r', marker = 'x', label = "b")  
plt.scatter(x, b2, c = 'b', marker = 'o', label = 'b~')  
plt.xlabel('index')
plt.ylabel('value')
plt.legend()  
plt.show()  

Exercise 11.3: Histogram and density estimation
Generate a vector z of 10000 observations from your favorite exotic distribution. Then make a plot that shows a histogram of z (with 25 bins), along with an estimate for the density, using a Gaussian kernel
density estimator (see scipy.stats). See Figure 2 for an example plot.

import numpy
import matplotlib.pyplot as plt
from scipy import stats

y = numpy.random.normal(size = 10000)
kernel = stats.gaussian_kde(y)
x = numpy.linspace(-10, 10, 1000)

plt.hist(y, 25, rwidth = 0.8, density = True)
plt.plot(x, kernel.evaluate(x))
plt.show()

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转载自blog.csdn.net/li_y21/article/details/80962698