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I have a dataframe that looks like this:

     Edades
0        -15.612896
1        -18.612896
2         11.387104
3        -12.612896
4         17.387104
            ...
566597    15.387104
566598     5.387104
566599     6.387104
566600     0.387104
566601    22.387104

I want to make a barplot that shows frequency of the data classified on intervals that are defined by multiples of the standard deviation. So far, I know that plt.hist() can actually do something like that but it wont let me use a float type value on the range.

The code I tried is the following:

plt.figure("Edad_Distrib")
plt.hist(nuevo_edad, range(-100,100))
plt.xlabel("Edades")
plt.ylabel("Frecuencia")
plt.title("Distrib edades")
plt.show()

How can i plot something in a range that looks like this?

plt.hist(nuevo_edad, range(-2*stdev,2*stdev))

If it serves any purpose, i have this code that my professor did in R that does exactly that with a randomly generated dataframe, i just dont know how to implement it in python and with my specific dataframe.

A <- rnorm(100)
m <- mean(A)
s <- var(A)
k <- -11

x = seq(-5, 5, length = k)
y = vector("numeric", length = (k-1))

for (i in 1:(k-1)){
       y[i] = sum(A>x[i] & A<x[i+1])

}

barplot(y)

0

2 Answers 2

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  • Define the bin edges, with df.a.mean() ± df.a.std() * value
    • The list-comprehension in the following code, creates a list of bin edges.
  • Get the mean of the dataframe with pandas.Series.mean
  • Get the standard deviation of the mean with pandas.Series.std
import pandas as pd
import numpy as np  # for sample data
import matplotlib.pyplot as plt

# create sample dataframe
np.random.seed(365)
data = {'a': [np.random.randint(700) for _ in range(3000)]}
df = pd.DataFrame(data)

# create the bin edges
bins = [df.a.mean() + (df.a.std() * v) for v in range(-5, 6, 1)]

print(bins)
[-652.44, -451.49, -250.55, -49.6, 151.35, 352.3, 553.25, 754.19, 955.14, 1156.09, 1357.04]
# create a column of bins
df['bins'] = pd.cut(df.a, bins=bins)

# groupby the bins and plot
df.groupby('bins')['a'].count().plot.bar()

enter image description here

# matplotlib plot
plt.hist(x=df.a, bins=bins)
plt.ylabel('Frequency')
plt.show()

# or dataframe plot
df.a.plot.hist(bins=bins)
plt.show()

enter image description here

2
  • Thank you so much! This was exactly what I was looking for Oct 4, 2020 at 21:36
  • 1
    @MHernandez22 You're welcome. I'm glad this helped. Oct 4, 2020 at 21:38
1

If you want to define a range you most pass it to the function as a keyword argument (kwarg), in this case range. It will be something like this:

plt.hist(nuevo_edad, range=(-2*stdev,2*stdev))

Note that you don't pass a collection (as range(a, b)) the argument range in hist is a tuple of two elements.

PS: this only affects what data you want to plot. If instead of that you mean how many bars you want in the histogram use the param bins.

Example:

plt.hist(nuevo_edad, bins=20, range=(-2*stdev,2*stdev))

This will plot all the data between -2*stdev and 2*stdev distributed in 20 bars.

1
  • 1
    Thanks! I'm going to try it too. Oct 4, 2020 at 21:37

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