I have a data frame that has two numeric columns 'observed' and 'expected'. I want to write a function to calculate chi-square of these values for each row. Now, I want to use SciPy already defined chisqaure in the function as follows:

```
def chi_2(df, observed, expected):
obs = np.array(df[observed])
exp = np.array(df[expected])
chi = scipy.stats.chisquare(obs, exp)[0]
return chi
df_f2['chi_2'] = chi_2(df_f2, 'observed', 'expected')
```

However, when I do so, I get the same value repeated for all rows. But if I replaced SciPy function with chi = ((obs-exp)**2)/exp, all work fine.

```
def chi_2(df, observed, expected):
obs = np.array(df[observed])
exp = np.array(df[expected])
chi = ((obs-exp)**2)/exp
return chi
```

But I don't understand why. Could you please explain it to me? It would be much better for me to use the already defined SciPy functions inside than writing the expressions my self. Thanks

`scipy.stats.chisquare`

gives you the aggregate (here sum) of the values from your second function. so if you do`chi_2(df_f2, 'observed', 'expected').sum()`

with your second function, you should retrieve`scipy.stats.chisquare(obs, exp)[0]`

?`chi_2()`

applies the test once, using the first column as`f_obs`

and the second column as`f_exp`

in the call of`chisquare()`

. Try something like`print(chi_2(df_f2, 'observed', 'expected'))`

to confirm this.`scipy.stats.chisquare`

isdesignedto accept two 1-d vectors and return the (scalar) test statistic χ², as in the formula in the wikipedia article; note the summation over all the terms. In your second version of`chi_2()`

, you use a Python expression of NumPy arrays, which is evaluated element-wise, and there is no summation.2more comments