This is a follow-up question to this answer. I'm trying to plot normed histogram, but instead of getting 1 as maximum value on y axis, I'm getting different numbers.

For array k=(1,4,3,1)

```
import numpy as np
def plotGraph():
import matplotlib.pyplot as plt
k=(1,4,3,1)
plt.hist(k, normed=1)
from numpy import *
plt.xticks( arange(10) ) # 10 ticks on x axis
plt.show()
plotGraph()
```

I get this histogram, that doesn't look like normed.

For a different array k=(3,3,3,3)

```
import numpy as np
def plotGraph():
import matplotlib.pyplot as plt
k=(3,3,3,3)
plt.hist(k, normed=1)
from numpy import *
plt.xticks( arange(10) ) # 10 ticks on x axis
plt.show()
plotGraph()
```

I get this histogram with max y-value is 10.

For different k I get different max value of y even though normed=1 or normed=True.

Why the normalization (if it works) changes based on the data and how can I make maximum value of y equals to 1?

**UPDATE:**

I am trying to implement Carsten König answer from plotting histograms whose bar heights sum to 1 in matplotlib and getting very weird result:

```
import numpy as np
def plotGraph():
import matplotlib.pyplot as plt
k=(1,4,3,1)
weights = np.ones_like(k)/len(k)
plt.hist(k, weights=weights)
from numpy import *
plt.xticks( arange(10) ) # 10 ticks on x axis
plt.show()
plotGraph()
```

Result:

What am I doing wrong?

`probability`

: Plot a histogram such that bar heights sum to 1 (probability)