Geometric Interpretation of Linear Programs Chris Osborn, Alan Ray, Carl Bussema, and Chad Meiners...

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Transcript of Geometric Interpretation of Linear Programs Chris Osborn, Alan Ray, Carl Bussema, and Chad Meiners...

Geometric Interpretation of Linear Programs

Chris Osborn, Alan Ray, Carl Bussema, and Chad Meiners

16 March 2005

Five total constraints; therefore 5 faces to the polyhedron

Feasibility in 3-Space

0,,

5

42subject to

523maximize

321

3

21

321

xxx

x

xx

xxx

Simplex Illustrated: Initial Dictionary

321

35

214

523

5

24

xxxz

xx

xxx

Current solution:

x1 = 0x2 = 0x3 = 0z=3x1+2x2+5x3=0

Simplex Illustrated: First Pivot

521

53

214

52325

5

24

xxxz

xx

xxx

Current solution:

x1 = 0x2 = 0x3 = 5z=3x1+2x2+5x3=25

Simplex Illustrated: Second Pivot

5423

221

53

421

221

1

531

5

2

xxxz

xx

xxx

Current solution:

x1 = 2x2 = 0x3 = 5z=3x1+2x2+5x3=31

Simplex Illustrated: Final Pivot

541

53

412

52733

5

24

xxxz

xx

xxx

Final solution (optimal):

x1 = 0x2 = 4x3 = 5z=3x1+2x2+5x3=33

Simplex Review and Analysis Simplex pivoting represents traveling along

polyhedron edges Each vertex reached tightens one constraint

(and if needed, loosens another) May take a longer path to reach final vertex

than needed

The Graphic Method Use geometry to quickly solve LP problems in 2

variables Plot all restrictions in 2D plane (x1, x2) Result plus axes forms polyhedron

Region of feasible solutions Draw any line with same slope as objective function

through polyhedron “Move” line until leaving feasible region

i.e., Find parallel tangent

Graphic Method Example:Step 1: Plot Boundary Conditionsmax 5x1 + 4x2

subject to:

x1 – 3x2 ≤ 3

2x1 + 3x2 ≤ 12

-2x1 + 7x2 ≤ 21

x1,x2 ≥ 0

Graphic Method Example:Step 2: Determine Feasibilitymax 5x1 + 4x2

subject to:

x1 – 3x2 ≤ 3

2x1 + 3x2 ≤ 12

-2x1 + 7x2 ≤ 21

x1,x2 ≥ 0Based only on this, where might the optimal solution be?

Graphic Method Example:Step 3: Plot Objective = c max 5x1 + 4x2

subject to:

x1 – 3x2 ≤ 3

2x1 + 3x2 ≤ 12

-2x1 + 7x2 ≤ 21

x1,x2 ≥ 0

Graphic Method Example:Step 4: Find Parallel Tangentmax 5x1 + 4x2

subject to:

x1 – 3x2 ≤ 3

2x1 + 3x2 ≤ 12

-2x1 + 7x2 ≤ 21

x1,x2 ≥ 0

Optimal solution:

x1=5, x2=2/3, z=83/3

Second Graphic Method Examplemax 4x1 + 6x2

subject to:

x1 – 3x2 ≤ 3

2x1 + 3x2 ≤ 12

-2x1 + 7x2 ≤ 21

x1,x2 ≥ 0Same constraints; new objective. What changes?

Second Graphic Method Example:No Tangent Exists    max 4x1 + 6x2

subject to:

x1 – 3x2 ≤ 3

2x1 + 3x2 ≤ 12

-2x1 + 7x2 ≤ 21

x1,x2 ≥ 0Optimal solution:

1.05 ≤ x1 ≤ 5,

2x1 + 3x2 = 12, z=24

Geometric Interpretation of Duality Consider earlier problem:

max 5x1 + 4x2

subject to:

x1 – 3x2 ≤ 3

2x1 + 3x2 ≤ 12

-2x1 + 7x2 ≤ 21

x1,x2 ≥ 0

Optimal: x1*=5, x2

*=2/3

Prove optimal if equal to corresponding dual solution

min 3y1 + 12y2 + 21y3

subject to:

y1 + 2y2 – 2y3 ≥ 5

-3y1 + 3y2 + 7y3 ≥ 4

y1, y2 ≥ 0

Geometric Duality Continued Think of dual variables as coefficients for

primal constraints (α = y1, = y2, = y3):(α) (x1 – 3x2) ≤ (α) 3() (2x1 + 3x2) ≤ () 12() (-2x1 + 7x2) ≤ () 21

Resulting sum is linear combination:(α+2-2)x1 + (-3α+3+7)x2 ≤ 3α+12+21

We can graph this for various choices of α, , and

Geometric Duality: Linear Combinations Graphed     

Three examples shown α = = 1, = 0 α = = = 1 α = 0, = = 1 Pink line is parallel tangent

Notice: primal solution two vertices away from origin Two constraints matter;

third irrelevant here. Duality implication: = 0

(α+2-2)x1 + (-3α+3+7)x2 ≤ 3α+12+21

Geometric Duality Graphed Again

Gives a line always passing through (5,2/3), the primal solution

If primal solution optimal, there must exist some α, such that resulting line matches parallel tangent. Why? Duality theorem guarantees

(α+2)x1 + (-3α+3)x2 ≤ 3α+12

Convex Set and Hulls Convex Sets

Convex Hulls

Applying LP Theorem to Convex Sets and Hulls

Convex Sets Two of these sets are not

like the others S1 and S4 are convex

S2 and S3 are not

A set S Rn

is convex iff Given a,b S For all 0 ≤ t ≤ 1 ta + (1-t)b S

S1

S2

S3

S4

Property of Convex Sets The intersection of two

convex sets results in a convex set

Every set has a minimal convex set that contains it

Convex Hulls Given a set S Rn

Convex Hull H Contains S Is convex Is contained by all

convex sets containing S (i.e. it is minimal)

Convex Hulls as Linear Equations Given a set S Rn For each point z in H There are k points

z1,…,zk in S

positive variables t1,…,tk

Such thatz = ti zi

1 = ti

z2

z

z3

z1

LP Theorem If a system of m linear equations has a

nonnegative solution, then it has a solution with at most m positive variables

So givenv=1…n aivxv = b (for i = 1…m)

xv ≥ 0

At most m of the variables x1…xn are positive

Implications Upon Convex Hulls For a space S Rn

We have at most n+1 points that define a hull point

So for R2, every point z in H is defined by at most 3 points in S

Why? Hull points are represented

by n+1 linear equations Thus we have at most n+1

positive scaling variables ti

z

z3

z1

z2

Some More Observations Every half-space is

convex

Every polyhedron is convex

The convex hull of a finite set of points is a polyhedron

LP Theorem Every unsolvable system of linear inequalities

for n variables contains a unsolvable subsystem of at most n+1 inequalities

We use this theorem for the common point theorem

Common Point Theorem Let F be a finite family

of at least n + 1 convex sets in Rn

Such that every n+1 sets in F have a point in common

All sets in F have a point in common

Common Point Theorem (continued)

Note that we can’t make guarantees without every n+1 sets in F having a point in common

Common Point Theorem (Why) The intersection of each

n+1 sets is a system of n+1 linear inequialities

Therefore the whole system cannot have an unsolvable subsystem of n+1 linear inequalities

Thus we have a point in common for the family of convex sets

Separation Theorem for Polyhedra For every pair of

disjoint polyhedra There exists a pair of

disjoint half-spaces Such that each half-

space contains a polyhedron

Conclusions Geometry useful for:

Understanding properties of linear programs Solving (some) linear programs Modeling linear programs visually

And geometric problems can be modeled with linear programs

Questions?