# Argmin of a function that returns a vector

How can we compute the argmin of a function? We don't want the index of the minimum value. We want the value of a vector (3 dimensions for example) that minimizes the function. In other words, we want to compute argmin f(x) knowing that x is a 3-dimension vector.

np.argmin returns the index value which is not want we want here

• There is no natural ordering on vectors. What concept of "minimum" are you using? – user2357112 Feb 11 at 18:12
• You could post what you tried and some example data input and expected output – Rolando cq Feb 11 at 18:14
• Let v=(v1,v2) in [0,2]x[0,2] and f(v)=4-v1-v2. argmin f along v is equal to (2,2). It means that f is minimal when v1=2 and v2=2 – Salma Feb 11 at 18:17
• Hence, we want to find a function that returns (2,2) in that example. The function should be np.argmin but it only returns the index position of the minimal value in an array (for example np.argmin([5,4,9]) returns 2; which is the index of the minimal value (4) in the array). And this is not what we want. – Salma Feb 11 at 18:31
• `argmin`, like `np.amin`, looks at an array, finding the minimum value in one or more axes. Sounds like you want something like `scipy.optimize.minimize`, which seeks to minimize an objective function. – hpaulj Feb 11 at 19:11