CentralLimitTheoremDemo
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Central Limit Theorem Demo
This project demonstrates the principles of the Central Limit Theorem by sampling a given input distribution 1000 times with a user specified sample size.
Requirements
If plotting is enabled, Matplotlib and Seaborn are required.
Usage
The central_limit_theorem_demo.py
file contains a CentralLimitTheorem
class. It can be instantiated with a distribution in the form of a list.
import central_limit_theorem_demo as clt
some_distribution = create_distribution(...)
cltDemo = clt.CentralLimitTheorem(some_distribution)
The demo can be run via the run_sample_demo
method on CentralLimitTheoremDemo. This method takes a sample size N
, a plotting flag plot
, and an optional num_bins
parameter describing the number of bins to use when plotting the demo output.
Example
A full example might look something like this.
import central_limit_theorem_demo as clt
def create_uniform_sample_distribution():
return range(100)
def run():
sampleDistribution = create_uniform_sample_distribution()
# Plot the original population distribution
clt.plot_distribution(sampleDistribution, "Population Distribution", 0, 100, 20)
# Plot a sampling distribution for values of N = 2, 3, 10, and 30
cltDemo = clt.CentralLimitTheoremDemo(sampleDistribution)
n_vals = [2, 3, 10, 30]
for N in n_vals:
cltDemo.run_sample_demo(N = N, plot = True, num_bins = 40)
This produces the following output images.