An Introductory Example¶
Contents
Overview¶
We’re now ready to start learning the Python language itself.
In this lecture, we will write and then pick apart small Python programs.
The objective is to introduce you to basic Python syntax and data structures.
Deeper concepts will be covered in later lectures.
You should have read the lecture on getting started with Python before beginning this one.
The Task: Plotting a White Noise Process¶
Suppose we want to simulate and plot the white noise process \(\epsilon_0, \epsilon_1, \ldots, \epsilon_T\), where each draw \(\epsilon_t\) is independent standard normal.
In other words, we want to generate figures that look something like this:
(Here \(t\) is on the horizontal axis and \(\epsilon_t\) is on the vertical axis.)
We’ll do this in several different ways, each time learning something more about Python.
We run the following command first, which helps ensure that plots appear in the notebook if you run it on your own machine.
%matplotlib inline
Version 1¶
Here are a few lines of code that perform the task we set
import numpy as np
import matplotlib.pyplot as plt
ϵ_values = np.random.randn(100)
plt.plot(ϵ_values)
plt.show()
Let’s break this program down and see how it works.
Imports¶
The first two lines of the program import functionality from external code libraries.
The first line imports NumPy, a favorite Python package for tasks like
working with arrays (vectors and matrices)
common mathematical functions like
cos
andsqrt
generating random numbers
linear algebra, etc.
After import numpy as np
we have access to these attributes via the syntax np.attribute
.
Here’s two more examples
np.sqrt(4)
2.0
np.log(4)
1.3862943611198906
We could also use the following syntax:
import numpy
numpy.sqrt(4)
2.0
But the former method (using the short name np
) is convenient and more standard.
Why So Many Imports?¶
Python programs typically require several import statements.
The reason is that the core language is deliberately kept small, so that it’s easy to learn and maintain.
When you want to do something interesting with Python, you almost always need to import additional functionality.
Packages¶
As stated above, NumPy is a Python package.
Packages are used by developers to organize code they wish to share.
In fact, a package is just a directory containing
files with Python code — called modules in Python speak
possibly some compiled code that can be accessed by Python (e.g., functions compiled from C or FORTRAN code)
a file called
__init__.py
that specifies what will be executed when we typeimport package_name
In fact, you can find and explore the directory for NumPy on your computer easily enough if you look around.
On this machine, it’s located in
anaconda3/lib/python3.7/site-packages/numpy
Subpackages¶
Consider the line ϵ_values = np.random.randn(100)
.
Here np
refers to the package NumPy, while random
is a subpackage of NumPy.
Subpackages are just packages that are subdirectories of another package.
Importing Names Directly¶
Recall this code that we saw above
import numpy as np
np.sqrt(4)
2.0
Here’s another way to access NumPy’s square root function
from numpy import sqrt
sqrt(4)
2.0
This is also fine.
The advantage is less typing if we use sqrt
often in our code.
The disadvantage is that, in a long program, these two lines might be separated by many other lines.
Then it’s harder for readers to know where sqrt
came from, should they wish to.
Random Draws¶
Returning to our program that plots white noise, the remaining three lines after the import statements are
ϵ_values = np.random.randn(100)
plt.plot(ϵ_values)
plt.show()
The first line generates 100 (quasi) independent standard normals and stores
them in ϵ_values
.
The next two lines genererate the plot.
We can and will look at various ways to configure and improve this plot below.
Alternative Implementations¶
Let’s try writing some alternative versions of our first program, which plotted IID draws from the normal distribution.
The programs below are less efficient than the original one, and hence somewhat artificial.
But they do help us illustrate some important Python syntax and semantics in a familiar setting.
A Version with a For Loop¶
Here’s a version that illustrates for
loops and Python lists.
ts_length = 100
ϵ_values = [] # empty list
for i in range(ts_length):
e = np.random.randn()
ϵ_values.append(e)
plt.plot(ϵ_values)
plt.show()
In brief,
The first line sets the desired length of the time series.
The next line creates an empty list called
ϵ_values
that will store the \(\epsilon_t\) values as we generate them.The statement
# empty list
is a comment, and is ignored by Python’s interpreter.The next three lines are the
for
loop, which repeatedly draws a new random number \(\epsilon_t\) and appends it to the end of the listϵ_values
.The last two lines generate the plot and display it to the user.
Let’s study some parts of this program in more detail.
Lists¶
Consider the statement ϵ_values = []
, which creates an empty list.
Lists are a native Python data structure used to group a collection of objects.
For example, try
x = [10, 'foo', False]
type(x)
list
The first element of x
is an integer, the next is a string, and the third is a Boolean value.
When adding a value to a list, we can use the syntax list_name.append(some_value)
x
[10, 'foo', False]
x.append(2.5)
x
[10, 'foo', False, 2.5]
Here append()
is what’s called a method, which is a function “attached to” an object—in this case, the list x
.
We’ll learn all about methods later on, but just to give you some idea,
Python objects such as lists, strings, etc. all have methods that are used to manipulate the data contained in the object.
String objects have string methods, list objects have list methods, etc.
Another useful list method is pop()
x
[10, 'foo', False, 2.5]
x.pop()
2.5
x
[10, 'foo', False]
Lists in Python are zero-based (as in C, Java or Go), so the first element is referenced by x[0]
x[0] # first element of x
10
x[1] # second element of x
'foo'
The For Loop¶
Now let’s consider the for
loop from the program above, which was
for i in range(ts_length):
e = np.random.randn()
ϵ_values.append(e)
Python executes the two indented lines ts_length
times before moving on.
These two lines are called a code block
, since they comprise the “block” of code that we are looping over.
Unlike most other languages, Python knows the extent of the code block only from indentation.
In our program, indentation decreases after line ϵ_values.append(e)
, telling Python that this line marks the lower limit of the code block.
More on indentation below—for now, let’s look at another example of a for
loop
animals = ['dog', 'cat', 'bird']
for animal in animals:
print("The plural of " + animal + " is " + animal + "s")
The plural of dog is dogs
The plural of cat is cats
The plural of bird is birds
This example helps to clarify how the for
loop works: When we execute a
loop of the form
for variable_name in sequence:
<code block>
The Python interpreter performs the following:
For each element of the
sequence
, it “binds” the namevariable_name
to that element and then executes the code block.
The sequence
object can in fact be a very general object, as we’ll see
soon enough.
A Comment on Indentation¶
In discussing the for
loop, we explained that the code blocks being looped over are delimited by indentation.
In fact, in Python, all code blocks (i.e., those occurring inside loops, if clauses, function definitions, etc.) are delimited by indentation.
Thus, unlike most other languages, whitespace in Python code affects the output of the program.
Once you get used to it, this is a good thing: It
forces clean, consistent indentation, improving readability
removes clutter, such as the brackets or end statements used in other languages
On the other hand, it takes a bit of care to get right, so please remember:
The line before the start of a code block always ends in a colon
for i in range(10):
if x > y:
while x < 100:
etc., etc.
All lines in a code block must have the same amount of indentation.
The Python standard is 4 spaces, and that’s what you should use.
While Loops¶
The for
loop is the most common technique for iteration in Python.
But, for the purpose of illustration, let’s modify the program above to use a while
loop instead.
ts_length = 100
ϵ_values = []
i = 0
while i < ts_length:
e = np.random.randn()
ϵ_values.append(e)
i = i + 1
plt.plot(ϵ_values)
plt.show()
Note that
the code block for the
while
loop is again delimited only by indentationthe statement
i = i + 1
can be replaced byi += 1
Another Application¶
Let’s do one more application before we turn to exercises.
In this application, we plot the balance of a bank account over time.
There are no withdraws over the time period, the last date of which is denoted by \(T\).
The initial balance is \(b_0\) and the interest rate is \(r\).
The balance updates from period \(t\) to \(t+1\) according to \(b_{t+1} = (1 + r) b_t\).
In the code below, we generate and plot the sequence \(b_0, b_1, \ldots, b_T\).
Instead of using a Python list to store this sequence, we will use a NumPy array.
r = 0.025 # interest rate
T = 50 # end date
b = np.empty(T+1) # an empty NumPy array, to store all b_t
b[0] = 10 # initial balance
for t in range(T):
b[t+1] = (1 + r) * b[t]
plt.plot(b, label='bank balance')
plt.legend()
plt.show()
The statement b = np.empty(T+1)
allocates storage in memory for T+1
(floating point) numbers.
These numbers are filled in by the for
loop.
Allocating memory at the start is more efficient than using a Python list and
append
, since the latter must repeatedly ask for storage space from the
operating system.
Notice that we added a legend to the plot — a feature you will be asked to use in the exercises.
Exercises¶
Now we turn to exercises. It is important that you complete them before continuing, since they present new concepts we will need.
Exercise 1¶
Your first task is to simulate and plot the correlated time series
The sequence of shocks \(\{\epsilon_t\}\) is assumed to be IID and standard normal.
In your solution, restrict your import statements to
import numpy as np
import matplotlib.pyplot as plt
Set \(T=200\) and \(\alpha = 0.9\).
Exercise 2¶
Starting with your solution to exercise 2, plot three simulated time series, one for each of the cases \(\alpha=0\), \(\alpha=0.8\) and \(\alpha=0.98\).
Use a for
loop to step through the \(\alpha\) values.
If you can, add a legend, to help distinguish between the three time series.
Hints:
If you call the
plot()
function multiple times before callingshow()
, all of the lines you produce will end up on the same figure.For the legend, noted that the expression
'foo' + str(42)
evaluates to'foo42'
.
Exercise 3¶
Similar to the previous exercises, plot the time series
Use \(T=200\), \(\alpha = 0.9\) and \(\{\epsilon_t\}\) as before.
Search online for a function that can be used to compute the absolute value \(|x_t|\).
Exercise 4¶
One important aspect of essentially all programming languages is branching and conditions.
In Python, conditions are usually implemented with if–else syntax.
Here’s an example, that prints -1 for each negative number in an array and 1 for each nonnegative number
numbers = [-9, 2.3, -11, 0]
for x in numbers:
if x < 0:
print(-1)
else:
print(1)
-1
1
-1
1
Now, write a new solution to Exercise 3 that does not use an existing function to compute the absolute value.
Replace this existing function with an if–else condition.
Exercise 5¶
Here’s a harder exercise, that takes some thought and planning.
The task is to compute an approximation to \(\pi\) using Monte Carlo.
Use no imports besides
import numpy as np
Your hints are as follows:
If \(U\) is a bivariate uniform random variable on the unit square \((0, 1)^2\), then the probability that \(U\) lies in a subset \(B\) of \((0,1)^2\) is equal to the area of \(B\).
If \(U_1,\ldots,U_n\) are IID copies of \(U\), then, as \(n\) gets large, the fraction that falls in \(B\), converges to the probability of landing in \(B\).
For a circle, \(area = \pi * radius^2\).
Solutions¶
Exercise 1¶
Here’s one solution.
α = 0.9
T = 200
x = np.empty(T+1)
x[0] = 0
for t in range(T):
x[t+1] = α * x[t] + np.random.randn()
plt.plot(x)
plt.show()
Exercise 2¶
α_values = [0.0, 0.8, 0.98]
T = 200
x = np.empty(T+1)
for α in α_values:
x[0] = 0
for t in range(T):
x[t+1] = α * x[t] + np.random.randn()
plt.plot(x, label=f'$\\alpha = {α}$')
plt.legend()
plt.show()
Exercise 3¶
Here’s one solution:
α = 0.9
T = 200
x = np.empty(T+1)
x[0] = 0
for t in range(T):
x[t+1] = α * np.abs(x[t]) + np.random.randn()
plt.plot(x)
plt.show()
Exercise 4¶
Here’s one way:
α = 0.9
T = 200
x = np.empty(T+1)
x[0] = 0
for t in range(T):
if x[t] < 0:
abs_x = - x[t]
else:
abs_x = x[t]
x[t+1] = α * abs_x + np.random.randn()
plt.plot(x)
plt.show()
Here’s a shorter way to write the same thing:
α = 0.9
T = 200
x = np.empty(T+1)
x[0] = 0
for t in range(T):
abs_x = - x[t] if x[t] < 0 else x[t]
x[t+1] = α * abs_x + np.random.randn()
plt.plot(x)
plt.show()
Exercise 5¶
Consider the circle of diameter 1 embedded in the unit square.
Let \(A\) be its area and let \(r=1/2\) be its radius.
If we know \(\pi\) then we can compute \(A\) via \(A = \pi r^2\).
But here the point is to compute \(\pi\), which we can do by \(\pi = A / r^2\).
Summary: If we can estimate the area of a circle with diameter 1, then dividing by \(r^2 = (1/2)^2 = 1/4\) gives an estimate of \(\pi\).
We estimate the area by sampling bivariate uniforms and looking at the fraction that falls into the circle.
n = 100000
count = 0
for i in range(n):
u, v = np.random.uniform(), np.random.uniform()
d = np.sqrt((u - 0.5)**2 + (v - 0.5)**2)
if d < 0.5:
count += 1
area_estimate = count / n
print(area_estimate * 4) # dividing by radius**2
3.14424