Convex cones
From Wikimization
| Line 27: | Line 27: | ||
Because dual geometry of this problem is easier to visualize, | Because dual geometry of this problem is easier to visualize, | ||
| - | we instead interpret | + | we instead interpret the dual conic program: |
<math>\,\begin{array}{cl}\mathrm{minimize}_\lambda&\lambda^{\rm T}x\\ | <math>\,\begin{array}{cl}\mathrm{minimize}_\lambda&\lambda^{\rm T}x\\ | ||
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&\lambda^{\rm T}v=1\end{array}~\qquad{\rm(d)}</math> | &\lambda^{\rm T}v=1\end{array}~\qquad{\rm(d)}</math> | ||
| - | where <math>\,\mathcal{K}^* | + | where <math>\,\mathcal{K}^*</math> is the dual cone, which is full-dimensional, closed, pointed, and convex because <math>\,\mathcal{K}\,</math> is. |
The primal optimal objective value equals the dual optimal value under the sufficient ''Slater condition'', which is well known; | The primal optimal objective value equals the dual optimal value under the sufficient ''Slater condition'', which is well known; | ||
Revision as of 22:07, 28 August 2008
Nonorthogonal projection on extreme directons of convex cone
pseudo coordinates
Let be a full-dimensional closed pointed convex cone
in finite-dimensional Euclidean space
.
For any vector and a point
,
define
to be the largest number
such that
.
Suppose and
are points in
.
Further, suppose that for each and every extreme direction
of
.
Then must be equal to
.
proof
We construct an injectivity argument from vector to the set
where
.
In other words, we assert that there is no except
that nulls all the
;
i.e., there is no nullspace to operator
over all
.
Function is the optimal objective value of a (primal) conic program:
Because dual geometry of this problem is easier to visualize, we instead interpret the dual conic program:
where is the dual cone, which is full-dimensional, closed, pointed, and convex because
is.
The primal optimal objective value equals the dual optimal value under the sufficient Slater condition, which is well known;
i.e., we assume