How Can I Change The Value Of A Masked Array In Numpy?
Solution 1:
Let's generalize your problem a bit:
In [164]: x=np.zeros((2,5))
In [165]: x[0, [1, 3]] = 5 # index with a list, not a slice
In [166]: x
Out[166]:
array([[ 0., 5., 0., 5., 0.],
[ 0., 0., 0., 0., 0.]])
When the indexing occurs right before the =
, it's part of a __setitem__
and acts on the original array. This is true whether the indexing uses slices, a list or a boolean mask.
But a selection with the list or mask produces a copy. Further indexed assignment affects only that copy, not the original.
In [167]: x[0, [1, 3]]
Out[167]: array([ 5., 5.])
In [168]: x[0, [1, 3]][1] = 6
In [169]: x
Out[169]:
array([[ 0., 5., 0., 5., 0.],
[ 0., 0., 0., 0., 0.]])
The best way around this is to modify the mask itself:
In [170]: x[0, np.array([1,3])[1]] = 6
In [171]: x
Out[171]:
array([[ 0., 5., 0., 6., 0.],
[ 0., 0., 0., 0., 0.]])
If the mask
is boolean, you may need to convert it to indexing array
In [174]: mask = x[0]>0
In [175]: mask
Out[175]: array([False, True, False, True, False], dtype=bool)
In [176]: idx = np.where(mask)[0]
In [177]: idx
Out[177]: array([1, 3], dtype=int32)
In [178]: x[0, idx[1]]
Out[178]: 6.0
Or you can tweak the boolean values directly
In [179]: mask[1]=False
In [180]: x[0,mask]
Out[180]: array([ 6.])
So in your big problem you need to be aware of when indexing produces a view and it is a copy. And you need to be comfortable with index with lists, arrays and booleans, and understand how to switch between them.
Solution 2:
It's not really a masked array what you've created:
x = np.zeros((2,5))
x[0][1:3] = 5
mask = (x[0] > 0)
mask
Out[14]: array([False, True, True, False, False], dtype=bool)
So, this is just a boolean array. To create a masked array you should use numpy.ma module:
masked_x = np.ma.array(x[0], mask=~(x[0] > 0)) # let's mask first row as you did
masked_x
Out[15]:
masked_array(data = [-- 5.0 5.0 -- --],
mask = [ True False False True True],
fill_value = 1e+20)
Now you can change your masked array, and accordingly the main array:
masked_x[1] = 10.
masked_x
Out[36]:
masked_array(data = [-- 10.0 5.0 -- --],
mask = [ True False False True True],
fill_value = 1e+20)
x
Out[37]:
array([[ 0., 10., 5., 0., 0.],
[ 0., 0., 0., 0., 0.]])
And notice that in masked arrays invalid entries marked as True
.
Solution 3:
To understand what's going on I suggest reading this http://scipy-cookbook.readthedocs.io/items/ViewsVsCopies.html
This boils down to the misleading use of fancy indexing. The following statements are the same and as you can see it's directly setting to 10 the elements of x using mask.
x[0][mask] = 10
x[0,mask] = 10
x.__setitem__((0, mask), 10)
What you're doing on the other hand is the following
x[0][mask][1] = 10
x[0,mask][1] = 10
x[0,mask].__setitem__(1, 10)
x.__getitem__((0, mask)).__setitem__(1, 10)
Which is creating a copy with __getitem__()
In conclusion you need to rethink how to modify that single number with a different mask __setitem()__
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