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I want to use scipy.optimize.check_grad to check the gradient of my implementation of the sigmoid function; here's my Python function:

def sigmoid(x, gradient=False):
    y = 1 / (1 + numpy.exp(-x))
    return numpy.multiply(y, 1 - y) if gradient else y

Here are the arguments and the call to check_grad:

x0 = numpy.random.uniform(-30, 30, (4, 5))
func = sigmoid
grad = lambda x: sigmoid(x, gradient=True)
error = scipy.optimize.check_grad(func, grad, x0)

I get the error below. The shape mismatch refers to the operation xk+d. Any idea what could be causing this?

File "scipy\optimize\optimize.py", line 597, in approx_fprime
grad[k] = (f(*((xk+d,)+args)) - f0) / d[k]
ValueError: operands could not be broadcast together with shapes (4,5) (4)

share|improve this question
As noted below, it's because to check the gradient you have to iterate over every single element of your matrix and +/- some epsilon in order to calculate the derivative (using the standard equation). Scipy could flatten your matrix out for you. However, it should be easy enough to pass in a flattened version yourself with M.flatten(). In Matlab you would just do M(:). –  Abe Schneider Jul 29 '13 at 1:43

1 Answer 1

The error you are getting is because check_gradient only accepts flat arrays of points. It should work if you used an array x0 of shape (20,) instead of (4, 5). But it does not!

Here's the implementation of approx_fprime in my installation (scipy.__version__ = '0.9.0'):

def approx_fprime(xk,f,epsilon,*args):
    f0 = f(*((xk,)+args))
    grad = numpy.zeros((len(xk),), float)
    ei = numpy.zeros((len(xk),), float)
    for k in range(len(xk)):
        ei[k] = epsilon
        grad[k] = (f(*((xk+ei,)+args)) - f0)/epsilon
        ei[k] = 0.0
    return grad

I have looked through it several times, finding it hard to believe that such atrocious code could be inside the scipy distribution, convinced I must be missing something... But I am afraid it is just wrong. If you replace it with:

def approx_fprime(xk,f,epsilon,*args):
    return (f(*((xk + epsilon,) + args)) - f(*((xk,) + args))) / epsilon

It now works for me. With x0.shape = (20,) I get:

In [2]: error
Out[2]: 1.746097524556073e-08

And with x0.shape = (4, 5):

In [4]: error
array([  1.03560895e-08,   1.45994321e-08,   8.54143390e-09,
         1.09225833e-08,   9.85988655e-09])

So it seems it is really not ready for non-flat arrays at other places too. But the implementation is very broken either way: you should file a bug report.

share|improve this answer
That way of approximating the gradient does not work, though. You should increment each argument by eps one at a time. For example when f maps arrays to scalars: the gradient should be an array, but (f(x+eps) - f(x)) / eps will produce a scalar. –  Paul Manta Feb 23 '13 at 16:14
@PaulManta I see, it wasn't so wrong after all, that was the catch... It still seems to me like a pretty useless function. I think the way it is set up it only works with functions that convert vectors into scalars, and then x0 must be a single vector, not a bunch of them. In your case you can get your call to work if x0.shape = (1,), i.e. if you give it a length-1 vector, it won't work with a scalar. As far as I can tell, that's about as good as it being broken! –  Jaime Feb 23 '13 at 17:13
Yes, check_grad isn't useful in that many cases, unfortunately. Well, the algorithm is simple to implement so it shouldn't be that big of a problem. –  Paul Manta Feb 23 '13 at 17:49

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