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I have a set of data. They are distributed in x-y positions but they have other characteristics like size. I like to grid my data in x-y plane and then obtain the grid index for each point and then compute the mean or standard deviation of size in each grid cell. I would like to see whether there is a correlation with the position in x-y plane with the size or not. The old fashion way is to write two loops and make a 3D matrix to keep the index of data in each cell. I am wondering whether there is a class in numpy or python which does this?

I know I can use np.histogram2d but it just returns the number of points in each grid but not the index of array in each point or matplotlib.mlab.griddata somehow interpolate between the grid cells but I don't want any interpolation. I am just interested to get the index of points in each grid cell.

xmin=min(Xpos);xmax=max(Xpos)
ymin=min(Ypos);ymax=max(Ypos)
ngridx = 10
ngridy = 10

xi = np.linspace(np.floor(xmin),np.ceil(xmax),ngridx)
yi = np.linspace(np.floor(ymin),np.ceil(ymax),ngridy)
H, xedges, yedges = np.histogram2d(Ypos, Xpos, bins=(xi, yi), normed=False)

The output from np.histogram2d looks like this:

>>>H
array([[  17.,  114.,  301.,  321.,  308.,  163.,  171.,  298.,  316.],
       [ 223.,  211.,  291.,  323.,  282.,  195.,  263.,  198.,  174.],
       [ 304.,  312.,  322.,  295.,  218.,  295.,  259.,  209.,   80.],
       [ 204.,  260.,  298.,  261.,  296.,  241.,   47.,  133.,  189.],
       [ 270.,  265.,  245.,  265.,  286.,  236.,  108.,  214.,  275.],
       [ 276.,  198.,  275.,  235.,  261.,  267.,  223.,  306.,  282.],
       [ 246.,   60.,   88.,  189.,  259.,  225.,  302.,  306.,  328.],
       [ 292.,  138.,    0.,  141.,  297.,  308.,  314.,  276.,  317.],
       [ 169.,  203.,   67.,  220.,  261.,  306.,  329.,  250.,  277.]])

But I would like to get the index in each grid cell. I am looking fir the fastest way to do it. I came up with this idea. I don't know whether it is the best way to go or not:

for i in range(len(xi)-1):
    for j in range(len(yi)-1):
        bxlow=(Xpos>xi[i]); bxup=(Xpos<=xi[i+1])
        bx=bxlow*bxup
        bylow=(Ypos>yi[j]); byup=(Ypos<=yi[j+1])
        by=bylow*byup
        bprim=bx*by

using bprim to distinguish data in the grids. any better suggestion?

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Could you also show some code with progress that you have made so we can understand your question better? –  sshashank124 Mar 19 at 13:08
    
Please show some code with an example ... –  logc Mar 19 at 13:13
    
Why not simply calculate the correlation between x,y and size variables? –  goncalopp Mar 19 at 13:16
    
@sshashank124 It is a big data set and I would like to do it in the fastest way because there are a lot of properties I would like to do statistics on them. Small piece of code is added. –  Dalek Mar 19 at 13:18
    
@gnocalopp I don't understand how it can be done? –  Dalek Mar 19 at 13:21
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1 Answer 1

Probably you are looking for numpy.indices?

http://docs.scipy.org/doc/numpy/reference/generated/numpy.indices.html

something like:

 row, col = np.indices( H.shape )

will get you what you want.

or, you may want the x,y coordinates? In that case,

np.meshgrid(xi,yi)
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