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We also must define the notion of an extremum in an arbitrary normed space.
Definition 1 Let be a real-valued functional defined on where is a normed space. A point is a local/relative minimum of on if for all such that for some .
Definition 2 Let be a real-valued functional defined on where is a normed space. A point is a local maximum of on if for all such that for some .
Definition 3 Let be a real-valued functional defined on where is a normed space. A point is a local strict minimum of on if for all such that for some .
Definition 4 Let be a real-valued functional defined on where is a normed space. A point is a local strict maximum of on if for all such that for some .
It turns out the notion of a gradient is intrinsically linked to the directional derivatives we have introduced.
Definition 5 Let be a Hilbert space and . If is a Fréchet differentiable functional, then for each there exists a vector in such that for all ; the vector is called the gradient of at , and can be written as a functional .
This definition can be seen to correspond to an application of the Riesz representation theorem to the Fréchet derivative , which is a linear bounded functional on .
Example 1 We know now that:
By the Cauchy-Schwarz Inequality, we have:
If then is maximized.
Example 2 Recall that if , then
Theorem 1 Let have a Gâteaux differential on . A necessary condition for to have an extremum at is that for all . Alternatively, if is a Hilbert space, we can write for all , which implies .
Suppose is a local minimum. Then there exists such that if then . Fix and let . Next, consider . For :
Therefore, for arbitrary nonzero . Now since is linear on we must have for . Therefore, the equality is true for all .
Definition 6 A point at which for all is called a stationary point of .
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