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Summary Convex Optimization - Lecture Notes

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Columbia Business School - First Year of the Doctoral Program in Decisions, Risk and Operations • Condensed Notes roughly following two courses I took - "Foundations of Optimization" (thought by Prof Ciamac Moallemi) and "Convex Optimization" (thought by Prof Garud Iyengar). These notes are also...

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  • May 6, 2023
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Convex Optimization Page 1



CONVEX OPTIMIZATION

Chapter 2 – Convex Sets
 Basics
o A set is affine if it contains any line through two of its point. Alternatively,
x1 , , x n Î , q+ = 1  q1x1 +  + qn x n Î  .

o The affine hull of a set of points is the set of all affine combinations of these
points.
o The affine dimension of a set is the dimension of its affine hull. Its relative
interior is its interior relative to its affine hull
relint  = {x Î C : B(x , r ) Ç aff  Í  for some r > 0}

o The most general form of a convex combination is (x ) , where (x Î  ) = 1 .
o A set  is a cone if x Î , q ³ 0  qx Î 

 {
The set (x , t ) : x £ t } is a norm cone associated with a particular norm.
 The conic hull of {xi } is {l1x1 +  + lk xk : l ³ 0 } .

o A hyperplane is a set of the form {x : a ⋅ x = b } . Hyperplane with normal vector

a, offset b from the origin; can be written as {x : a ⋅ (x - x 0 ) = 0} = x 0 + a ^

o Given k + 1 affinely independent pints (ie: vi - v0 linearly independent), the k-
dimensional simplex determined by these points is  = {å qi vi : qi ³ 0, q+ = 1} .

We can describe this as a polyhedron as follows:
 Write B = éëêv1 - v0 , , vk - v0 ùûú and q ¢ = éêëq1 , , qk ùúû . All points x Î  can

then be expressed as x = v0 + Bq ¢ provided q ¢ ³ 0 and 1 ⋅ q ¢ £ 1

 B has rank k (by assumptions) and k < n, and so there exists a A Î n´n
é A B ù éI ù
such that AB = êê 1 úú = êê úú .
êëA2B úû êë 0 úû




Daniel Guetta

,Convex Optimization Page 2


 Multiplying the boxed equation by A, we get q ¢ = A1x - A1v0 and
A2x = A2v0 . We can therefore express q ¢ ³ 0 and 1 q ¢ £ 0 as linear
inequalities. Together with A2x = A2v0 , they define the polyhedron.

 Operations that preserve convexity
o Intersection (including infinite intersection) – also preserve subspaces, affine
sets and convex cones:
 Example: The positive semidefinite cone n+ can be written as

 {X Î 
z ¹0 n }
: z  Xz ³ 0 . Each set in the intersection is convex (since

the defining equations are linear), and so n+ is convex. 

 Example:  = x Î m : { åx i
cos(it ) £ 1 for t Î [- p3 , p3 ] } can be written

as  t Î[- p , p ]
3 3
{X Î  n
: -1 £ (cos t, , cos mt ) ⋅ x £ 1} , and so is convex. 

o Affine functions: An affine function has the form f (x ) = Ax + b . The image
and inverse image of a convex set under such a function is convex.
 Example: 1 + 2 = {x + y : x Î 1 , y Î 2 } is the image of

1 ´ 2 = {(x1 , x 2 ) : x1 Î 1 , x 2 Î 2 } under f (x1 , x 2 ) = x1 + x 2 . 

 Example: {x : Ax £ b,Cx = d } is the inverse image of  + ´ {0} under

f (x ) = (b - Ax, d - Cx ) . 

 Example: {x : A(x ) = x A +  + x A
1 1 n n
 B } is the inverse image of the

positive semidefinite cone n+ under f (x ) = B - A(x ) . 

 { }
Example: x : (x - xc ) P (x - xc ) £ 1 , where P Î n++ is the image of a

unit Euclidean ball under f (u ) = P 1/2u + xc . 
o Perspective function: f (z, t ) = z / t , where t > 0. It normalizes the last
component of a vector to 1 and then gets rid of that component. The image of a
convex set under the perspective function is convex.
o Linear-fractional function: A linear-fractional function is formed by compsing
that perspective function with an affine function. They take the form
f (x ) = (Ax + b) / (c ⋅ x + d ) , with domain {x : c ⋅ x + d > 0} .




Daniel Guetta

,Convex Optimization Page 3


 Separating & Supporting Hyperplanes
o Theorem: If  Ç  ¹ Æ then $a ¹ 0 and b such that a ⋅ x £ b "x Î  and
a ⋅ x ³ b "x Î  . In some cases, strict separation is possible (ie: the inequalities
become strict).

o {
Example: Consider an affine set  = Fu + g : u Î m } and a convex set 

which are disjoint. Then by our Theorem, there exists a ¹ 0 and b such that

a ⋅ x £ b "x Î  and a ⋅ [Fu + g ] ³ b  a Fu ³ b - a ⋅ g "u . The only way a
linear function can be bounded below is if it’s 0 – as such, a F = 0 , and
b £ a ⋅g .
o Theorem: Consider two convex sets  and  . Provided at least one of them is
open, they are disjoint if and only if there exists a separating hyperplane.
Proof: Consider the open set – a ⋅ x cannot be 0 for any x in that set, else it
would be greater than 0 for a point close to x. Thus, a ⋅ x is strictly less than 0
for all points in the open set. 
o Example: Consider Ax < b . This has a solution if and only if

{
 = b - Ax : x Î  n } and  = m++ do not intersect. By the Theorem, this is

true if and only if there exists l ¹ 0 and m Î  such that l ⋅ y £ m "y Î  and
l ⋅ y ³ m "y Î  . In other words, there is not separating hyperplane iff

l ¹0 l ³0 Al = 0 l b £ 0
Thus, only one of this sytem and Ax < b can have a solution. 



Chapter 3 – Convex Functions
 Basics
o We extend a convex/concave function by setting it to +/– ¥ outside its domain.
o Theorem: f is convex over  convex iff f (y ) ³ f (x ) + f (x ) (y - x ) over  .

Proof:  choose x1, x2 and convex comb z. Apply equation with y = z and

x = x i . Multiply one equation by l , other by 1 - l . Add the two.  Take x,
y. By convexity f (x + t[y - x ]) £ (1 - t )f (x ) + tf (y ) for t Î (0,1) . Re-arrange to get




Daniel Guetta

, Convex Optimization Page 4


f(y) on one side, divide by t, take limit as t  0 . General case consider

g(t ) = f (ty + (1 - t )x ) and g ¢(t ) = f (ty + (1 - t )x ) (y - x ) .  Apply previous





result with y = 1 and x = 0.  Apply inequality with ty + (1 - t )x and
ty + (1 - t)x . This implies an inequality about g that makes it convex. 
o Theorem: 2 f (x )  0 over  convex  f convex over  .

Proof: f (y ) = f (x ) + f (x ) ⋅ (y - x ) + 12 (y - x ) éê2 f (ex + (1 - e)y )ùú (y - x ) for
ë û
e Î [0,1] . If 2 f is positive definite, get FOC for convexity. 

 Convex functions
The following functions are convex
Function Parameters Convex/concave… …on domain

eax aÎ convex 
a > 1 or a < 0 convex (0, ¥)
xa
0<a<1 concave (0, ¥)
| x |p p>1 convex 
log x concave (0, ¥)
x log x convex (0, ¥)
a ⋅x +b (ie: any affine function) both n
(ie: any norm) convex n
log (å e ) xi
(the log-sum-exp func.) convex n

( x )
1/n
i
(the geometric mean) concave (0, ¥)n

log det X (the log determinant) convex X Î n++
Same as fi, providing they are all
å w f (x )
i i
wi > 0
concave/convex


Ways to find convexity:
o Directly verify definition

o Check the Hessian: for example, for f (x , y ) = x 2 / y

2 êé y -xy ùú é ù
2
2
 f (x , y ) = 3 ê =
2 é
y -x ùê y ú0
2 ú ê úû ê-x ú
y ëê-xy x ûú y 3 ë ëê úû




Daniel Guetta

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