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June 4, 2017 23:01
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Simulates doing a thousand polls at a 1.5k sample size from a population of 256 million. Most any poll was off was by 4.5%, while average variance was just 1.19%.
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import random | |
american_adult_population = int(245e6) | |
# Warning: This array is HUGE! | |
# The array is just the numbers from 0 to 245,000,000 | |
usa_array = range(american_adult_population) | |
actual_average = float(american_adult_population / 2) | |
sample_amount = 1500 | |
def make_sample(population, k=sample_amount): | |
""" | |
Given a population (and an optional sample amount (k)), return a tuple of: | |
- the average of the same | |
- the absolute difference between the sample average and real average | |
- the percent difference between the sample average and real average | |
""" | |
sampling = random.sample(usa_array, k) | |
avg = average(sampling) | |
return ( | |
int(avg), | |
abs(avg - actual_average), | |
round(abs((avg - actual_average)/actual_average) * 100, 4), | |
) | |
def average(nums): | |
total = 0 | |
for num in nums: | |
total += num | |
return float(total) / len(nums) | |
samples = [make_sample(usa_array) for _ in range(1000)] | |
if __name__ == "__main__": | |
percents_sample_is_off_by = [p for _, _, p in samples] | |
print ( | |
max(percents_sample_is_off_by), | |
average(percents_sample_is_off_by) | |
) |
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