# classify labels to -1 or 1

I have a tensor with values between -1 and 1 . How can I get a new tensor such that where were negative values now there will be one and where were positive numbers now there will be 1? (efficiently)

Namely,

``````tensor1 = [-0.1, 0.5, 0.08]
new_tensor = [-1, 1, 1]
``````

and zero will be -1 or 1

With numpy it is trivial:

``````import numpy as np
tensor1 = [-0.1, 0.5, 0.08]
new_tensor = np.sign(tensor1)
new_tensor[new_tensor==0] = 1
``````
• but in this case zero will be zero. How can I turn it to 1 or to -1? May 4 at 11:14
• What do you want zero to be? May 4 at 11:15
• In case, add a line `new_tensor[new_tensor==0] = 1 # or -1` May 4 at 11:16
• I edited my answer May 4 at 11:18

I would use `numpy.where` for this task following way

``````import numpy as np
tensor1 = np.array([-0.1, 0.5, 0.08])
new_tensor = np.where(tensor1<0,-1,1)
print(new_tensor)
``````

output

``````[-1  1  1]
``````

Note this will asign `1` to `0` if you wish to assign `-1` to `0` then alter condition to `tensor1<=0`