# Connect the points to zero for missing points

I have a dataset like this,where I have a set of values for `xs` and I plot the corresponding line graph with the values of `ys`.

``````xs = np.array([1,2,5,6,9,10,11)
ys = pow(xs,2)
ys
plt.plot(xs, ys, linestyle='-', marker='o')

plt.show()
``````

If you notice by default, plot connects the points and draws line. But, I want to draw the line at 0 for missing points. How do I do this ? Should I manipulate the data to fill missing values with zeros (numpy,maybe) or is there a way to plot this `matplotlib.plot` ?

To be precise I need to plot: `xs = np.array([1,2,0,0,5,6,0,0,9,10,11,0,0,0,0])` `ys = pow(xs,2)` But, as of now, this is my `xs=np.array([1,2,5,6,9,10,11)`. How do i fill the missing elements in the range 1:15. I looked at `masked_array` which is different. Is there any other fill option in numpy ?

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What exactly are you trying to plot? I'd suggest just adding the zero, since it would work here, but depending on what you want to plot, different things may work better. –  wbest Feb 21 at 21:35
I'm trying to plot the frequency of occurrence of `xs` - which is `ys`, so that when there is a missing point it should be shown as zero occurrences. –  Learner Feb 21 at 21:49
Do you want to do a histogram? –  wbest Feb 21 at 22:01
Yes you are right, but need to account for missing elements as well. I need a zero for missing points. –  Learner Feb 21 at 22:25
Please provide an example of the input you have and a synthetic version of the output you want. –  wbest Feb 21 at 22:32

Since you want to plot points that aren't in your data set, it will be hard to do directly in matplotlib. But, constructing the points is easy enough using `put`:

``````xs = array([1,2,5,6,9,10,11])
ys = xs**2

x = arange(12)
y = zeros(12, dtype=int32)
put(y, xs, ys)

plt.plot(x, y, 'o', clip_on=False)
``````

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Awesome ! this is exactly the function I was looking for. Thanks :) –  Learner Feb 21 at 23:44