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So I am trying to learn python and some stats. In one example code about the F-test, this appears.

np.random.seed(12)

# Generate random data

voter_race = np.random.choice(a= races, p = [0.05, 0.15 ,0.25, 0.05, 0.5], size=1000)



# Use a different distribution for white ages

white_ages = stats.poisson.rvs(loc=18, mu=32, size=1000)

voter_age = stats.poisson.rvs(loc=18, mu=30, size=1000)

voter_age = np.where(voter_race=="white", white_ages, voter_age)


# Group age data by race

voter_frame = pd.DataFrame({"race":voter_race,"age":voter_age})

groups = voter_frame.groupby("race").groups


# Extract individual groups

asian = voter_age[groups["asian"]]

black = voter_age[groups["black"]]

hispanic = voter_age[groups["hispanic"]]

other = voter_age[groups["other"]]

white = voter_age[groups["white"]]


# Perform the ANOVA

stats.f_oneway(asian, black, hispanic, other, white)

In the bolded code, why does voter_race appear twice, and why is white_ages also in the np.where code?

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np.where returns x or y, (the second or third parameter) depending on if the first parameter condition is true or not. If the condition is true return x otherwise return y. The documentation on that function is pretty good.

So the np.where statement here will return white_ages if voter_race is "white" otherwise it will return voter_age.

Also none of your code appears bolded, FYI.

  • My bad. I first posted this on reddit where I bolded the text, but because I got no reply, I copied it on here, and thus the bolded code disappeared. But thanks anyways! – RedTiger Mar 8 at 21:03

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