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A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint work with Jugal Garg, Milind Sohoni and Vijay V. Vazirani

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Page 1: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

A Lemke-Type Algorithm for Market Equilibrium under Separable,

Piecewise-Linear Concave Utilities

Ruta Mehta

Indian Institute of Technology – Bombay

Joint work with Jugal Garg, Milind Sohoni and Vijay V. Vazirani

Page 2: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Exchange MarketSeveral agents

Page 3: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Several agents with endowment of goods

Page 4: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Several agents with endowments of goods and different concave utility functions

Page 5: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Given prices, an agent sells his endowment and buys an optimal bundle from the earned money.

1p 2p3p

Page 6: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Parity between demand and supplyequilibrium prices

1p 2p 3p

Page 7: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Do equilibrium prices exist?

1p 2p 3p

Page 8: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Arrow-Debreu Theorem, 1954

Celebrated theorem in Mathematical Economics

Established existence of market equilibrium under very general conditions using a deep theorem from topology - Kakutani fixed point theorem.

Page 9: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Arrow-Debreu Theorem, 1954

Celebrated theorem in Mathematical Economics

Established existence of market equilibrium under very general conditions using a theorem from topology - Kakutani fixed point theorem.

Highly non-constructive!

Page 10: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Computation

The Linear Case

DPSV (2002) – Flow based algorithm for the Fisher market.

Jain (2004) – Using Ellipsoid method.

Ye (2004) – Interior point method.

Page 11: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Separable Piecewise-Linear Concave (SPLC)

Utility function of an agent is separable for goods.

Amount of good j

Utility

Page 12: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Separable Piecewise-Linear Concave (SPLC)

Utility function of an agent

is separable

Rationality – Devanur and Kannan (2008); Vazirani and Yannakakis (2010).

Amount of good j

Utility

Page 13: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Separable Piecewise-Linear Concave (SPLC)

Utility function of an agent

is separable

Rationality – Devanur and Kannan (2008); Vazirani and Yannakakis (2010).

Devanur and Kannan (2008) – Polynomial time algorithm when number of agents or goods are constant.

Amount of good j

Utility

Page 14: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

SPLC – Hardness Results

Chen et al. (2009) – It is PPAD-hard.

Chen and Teng (2009) – Even for the Fisher market it is PPAD-hard.

Vazirani and Yannakakis (2010) It is PPAD-hard for the Fisher market. It is in PPAD for both.

Page 15: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Vazirani and Yannakakis

“The definition of the class PPAD was designed to capture problems that allow for path following algorithms, in the style of the algorithms of Lemke-Howson. It will be interesting to obtain natural, direct path following algorithm for this task (hence leading to a more direct proof of membership in PPAD), which may be useful for computing equilibria in practice.”

Page 16: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Initial Attempts DPSV like flow based algorithm.

Lemke-Howson A classical algorithm for 2-Nash. Proves containment of 2-Nash in PPAD.

Lemke-Howson type algorithm for linear markets by Garg, Mehta and Sohoni (2011).

Extend GMS algorithm.

Page 17: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Linear Case: Eaves (1975) LCP formulation to capture market equilibria. Apply Lemke’s algorithm to find one.

He states: “Also under study are extensions of the overall method to include piecewise linear concave utilities, production, etc., if successful, this avenue could prove important in real economic modeling.”

In 1976 Journal version He demonstrates a Leontief market with only

irrational equilibria, and concludes impossibility of extension.

Page 18: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Our Results Extend Eave’s LCP formulation to SPLC markets. Design a Lemke-type algorithm.

Runs very fast in practice. Direct proof of membership of SPLC markets in PPAD. The number of equilibria is odd (similar to 2-Nash,

Shapley’74). Provide combinatorial interpretation.

Strongly polynomial bound when number of goods or agents is constant.

In case of linear utilities, prices and surplus are monotonic Combinatorial algorithm. Equilibria form a convex polyhedral cone.

Page 19: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Linear Complementarity Problem For LP: Complementary slackness conditions

capture optimality. 2-Nash: Equilibria are characterized through

complementarity conditions.

Given n x n matrix M and n x 1 vector q, find y s.t.

My ≤ q; y ≥ 0

My + v = q; v, y ≥ 0 yTv = 0yT(q – My) =

0

nR

Page 20: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Properties of LCP

yTv = 0 => yivi = 0, for all i.

At a solution, yi=0 or vi=0, for all i.

Trivial if q ≥ 0: Set y = 0, and v = q.

P: My + v = q; v, y ≥ 0

yTv = 0

Page 21: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Properties of LCP

yTv = 0 => yivi = 0, for all i.

At a solution, yi=0 or vi=0, for all i.

There may not exist a solution.

yTv = 0

P: My + v = q; v, y ≥ 0

Page 22: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Properties of LCP

yTv = 0 => yivi = 0, for all i.

At a solution, yi=0 or vi=0, for all i.

If there exists a solution, then there is a vertex of P which is a solution.

yTv = 0

P: My + v = q; v, y ≥ 0

Page 23: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Properties of LCP

Solution set might be disconnected.

There is a possibility of a simplex-like algorithm given a feasible vertex of P.

yTv = 0

P: My + v = q; v, y ≥ 0

Page 24: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Lemke’s Algorithm Add a dimension:

P’: My + v – z = q; v, y, z ≥ 0yTv=0

T = Points in P’ with yTv=0.

Required: A point of T with z=0

Assumption: P’ is non-degenerate.

Page 25: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

The set TP’: My + v – z = q; v, y, z ≥ 0

yTv=0

Assumption: P’ is non-degenerate.

n inequalities should be tight at every point.

P’ is n+1-dimensional => T consists of edges and vertices.

Page 26: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

The set TP’: My + v – z = q; v, y, z ≥ 0

yTv=0

Assumption: P’ is non-degenerate.

Ray: An unbounded edge of T. If y=0 then primary ray, all others are secondary

rays. At a vertex of T

Either z=0 Or ! i s.t. yi=0 and vi=0. Relaxing each gives two

adjacent edges of S.

Page 27: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

The set TP’: My + v – z = q; v, y, z ≥ 0

yTv=0

Assumption: P’ is non-degenerate.

Paths and cycles on 1-skeleton of P’.

z=0

z=0

z=0

Page 28: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Lemke’s AlgorithmP’: My + v – z = q; v, y, z ≥ 0

yTv=0

Assumption: P’ is non-degenerate.

Invariant: Remain in T.

Start from the primary ray.

Page 29: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Starting VertexP’: My + v – z = q; v, y, z ≥ 0

yTv=0 Primary Ray:

y=0, z and v change accordingly.

Vertex (v*, y*, z*): y* = 0; i* = argmini qi; z* = |qi*|; vi* = qi + z*;

z=z*

y =

0z=∞

v > 0

vi*=0

Page 30: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

The Algorithm Start by tracing the primary ray up to (v*, y*,

z*).

z=z*vi*=0

v > 0, y =

0z=∞

Page 31: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

The Algorithm Start by tracing the primary ray up to (v*, y*,

z*). Then relax yi* = 0,

vi*=0yi*=0

v i*>0

v i*=0

y i*>

0

Page 32: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

The Algorithm

In general If vi ≥ 0 becomes tight, then relax yi = 0,

And if yi ≥ 0 becomes tight then relax vi = 0.

z=0

vi=0yi=0

vi =0

yi >0

v i>0y i=

0

vi*=0yi*=0

v i*>0

v i*=0

y i*>

0

Page 33: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

The Algorithm Start by tracing the primary ray up to (v*, y*,

z*). If vi ≥ 0 becomes tight, then relax yi=0

And if yi ≥ 0 becomes tight then relax vi=0.

vi=0yi=0

vi =0

yi >0

v i>0y i=

0

vi*=0yi*=0

v i*>0

v i*=0

y i*>

0

Page 34: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Properties and Correctness No cycling.

Termination: Either at a vertex with z=0 (the solution), or on an

unbounded edge (a secondary ray).

No need of potential function for termination guarantee.

Page 35: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Exchange Markets A: Set of agents, G: Set of goods

m= |A|, n=|G|.

Agents i with wij endowment of good j utility function :

i nf R R

Page 36: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Separable Piecewise-Linear Concave (SPLC) Utilities

Utility function f i is: Separable – is for jth good, and f i(x) = Piecewise-Linear Concave

Segment k with Slope , and range = b –

a.

: ij

f R R ( )if xj j j

ijku i

jkl

ijf

xj

ijku

a b

Page 37: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Optimal Bundle for Agent i Utility per unit of money: Bang-per-buck

Given prices Sort the segments (j, k) in decreasing order of bpb Partition them by equality – q1,…,qd. Start buying from the first till exhaust all the

money

Suppose the last partition he buys, is qk

q1,…,qk-1 are forced, qk is flexible, qk+1,…,qd are undesired.

ijki

jkj

ubpb

p

p

( )ij jjw p

Page 38: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Forced vs. Flexible/Undesired Let be inverse of the bpb of flexible

partition. If (j, k) is forced then:

Let be the supplementary price s.t.

Complementarity Condition:

i

1, and

ijki i i

jk jk jk ji j

ubpb q l p

p

0ijk 1

ijk

ii j jk

u

p

0 and 0

( ) 0

i i i i i ijk jk jk j jk jk j jk

i i ijk jk jk j

q l p q l p

q l p

Page 39: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Undesired vs. Flexible/Forced If (j, k) is undesired then:

Complementarity Condition:

1, and 0. Therefore 0.

ijki i i

jk jk jki j

ubpb q

p

1 10, and 0

i ijk jki i

jk jki ij jk i j jk i

u uq q

p p

1

0

( ) 0

ijki

jk ij jk i

i i ijk jk i j jk

uq

p

q u p

Page 40: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

LCP Formulation

, ,

, ,

0

0, 0, ( ) 0

0, 0, ( ) 0

, 0, 0

0, 0, 0

i ijk j j j jk j

i k i k

i i i i i ijk i j jk jk

i ijk ij j i i

jk jk i j jki i i i i ijk jk j jk jk jk jk

jk ij jj k j j k

j

j

ijk u p q

j q p p p q p

i q w p z q w

q u p

ijk q l p q

z

p

p

l

Page 41: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

LCP and Market Equilibria Captures all the market equilibria.

To capture only market equilibria, We need to be zero whenever is zero:

Homogeneous LCP (q=0) Feasible set is a polyhedral cone. Origin is the dummy solution, and the only vertex.

( , , ), 0ijk ji j k p

ijk

jp

Page 42: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Recall: Starting VertexP’: My + v – z = q = 0; v, y, z ≥ 0

yTv=0 Primary Ray:

y=0, z and v changes accordingly.

Vertex (v*, y*, z*): y* = 0; i* = argmini qi; z* = |qi*| = 0; vi* = qi + z* = 0;

The origin

z=z*

y =

0z=∞

v > 0

vi*=0

Page 43: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Non-Homogeneous LCP If u is a solution then so is αu, α ≥ 0. Impose p ≥ 1.

p1

p2

0 p1

p1=1

p2=1

p2

0

Page 44: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Non-Homogeneous LCP

Starting vertex: and the rest are zero. End point of the primary ray.

arg max iji j

z w

,

,

1, , 0, 0

,

1,

, 0, 0

, 0, 0

, , 0, 0

ijk

i i i i i i ijk i j jk jk jk jk jk jk

i i i i i i i ijk jk j jk jk jk jk jk j

j j j j j ji k

ijk ij j i ij i i i i

j k j

j

k

jik

j q p t p

ijk u p r q r q r

ijk q l

t p t

i q w p z

p

s w s s

ijk

a l a a

1, 0i ij jk jkp b b

Page 45: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Non-Homogeneous LCP

Let y and v = [s, t, r, a] then in short

My + - zd = q; y, v, z ≥ 0; b ≥ 0

yTv = 0

,

,

1, , 0, 0

,

1,

, 0, 0

, 0, 0

, , 0, 0

ijk

i i i i i i ijk i j jk jk jk jk jk jk

i i i i i i i ijk jk j jk jk jk jk jk j

j j j j j ji k

ijk ij j i ij i i i i

j k j

j

k

jik

j q p t p

ijk u p r q r q r

ijk q l

t p t

i q w p z

p

s w s s

ijk

a l a a

1, 0i ij jk jkp b b

[ , , , ]p q v

b

Page 46: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Lemke-Type Algorithm

P’: My + - zd = q; y, v, z ≥ 0; b ≥ 0

yTv = 0

A solution with z=0 maps to an equilibrium.

does not participate in complementarity

condition.

If a becomes tight, then the algorithm

gets stuck.

v

b

0ijkb

0ijkb

Page 47: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Detour – Strong Connectivity

Page 48: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Strong Connectivity (Maxfield’97) G = Graph with agents as nodes. Edges

G is Strongly Connected.

ijf

Page 49: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Strong Connectivity Weakest known condition for the existence of

market equilibrium (Maxfield’97).

Assumed by Vazirani and Yanakkakis for the PPAD proof.

It also implies that the market is not reducible. Reduction is an evidence that equilibrium does not

exist.

Secondary ray => Reduction => Evidence of no market equilibrium.

Page 50: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Back to The Algorithm

Page 51: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Lemke-Type Algorithm

P’: My + - zd = q; y, v, z ≥ 0; b ≥ 0

yTv = 0

does not participate in complementarity

condition.

If a becomes tight, then the algorithm

gets stuck.

This is expected otherwise NP = Co-NP

Since checking existence is NP-hard in general

(VY).

v

b

0ijkb

0ijkb

Page 52: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Lemke-type Algorithm

P’: My + - zd = q; y, v, z ≥ 0; b ≥ 0

yTv = 0Assumption: Market satisfies Strong

Connectivity

and accordingly

v

b

0ijk jp 0 i

jk jp

1i ijk j jkp b i i

jk j jkp b

Page 53: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

CorrectnessAssumption: Market satisfies Strong Connectivity

If ∆ is sufficiently large (polynomial sized), then never becomes tight.

Secondary rays are non-existent Since a secondary ray => equilibrium does not

exist.

Algorithm terminates with a market equilibrium.

0ijkb

Page 54: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Consequences Obtained a path following algorithm.

Runs very fast in practice.

Proves the membership of SPLC case in PPAD using Todd’s result on orientating complementary pivot

path

Start the algorithm from an equilibrium by leaving z=0, it reaches another equilibrium Since secondary rays are non-existent. Pairs up equilibria => The number of equilibria is

odd.

Page 55: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Combinatorial Interpretation Prices are initialized to 1. Goods with price more than 1 are fully sold.

Only agents with maximum surplus are in the market z captures the maximum surplus.

Allocation configuration does not repeat. Strongly polynomial bound when number of

agents or goods are constant.

Page 56: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

The Linear Case Eaves (1975) – “That the algorithm can be

interpreted as a `global market adjustment mechanism' might be interesting to explore.”

The maximum surplus monotonically decreases, and prices monotonically increase. Market mechanism interpretation

Unique equilibrium if the input is non-degenerate.

In general, equilibria form a polyhedral cone.

Page 57: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Experimental Results Inputs are drawn uniformly at random.

from [0, 1], from [0, 1/#seg], and from [0, 1]

|A|x|G|x#Seg

#Instances

Min Iters Avg Iters Max Iters

10 x 5 x 2 1000 55 69.5 91

10 x 5 x 5 1000 130 154.3 197

10 x 10 x 5 100 254 321.9 401

10 x 10 x 10

50 473 515.8 569

15 x 15 x 10

40 775 890.5 986

15 x 15 x 15

5 1203 1261.3 1382

20 x 20 x 5 10 719 764 853

20 x 20 x 10

5 1093 1143.8 1233

ijku i

jkl ijw

Page 58: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

What Next? SPLC case:

Analyze how the obtained equilibrium different. Combinatorial algorithm. Explore structural properties like index, degree,

stability similar to 2-Nash. Extension to markets with production.

Rational convex program for the linear case.

Page 59: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Thank You

Page 60: A Lemke-Type Algorithm for Market Equilibrium under Separable, Piecewise-Linear Concave Utilities Ruta Mehta Indian Institute of Technology – Bombay Joint

Properties of LCP

yTv = 0 => yivi = 0, for all i.

At a solution, yi=0 or vi=0, for all i => n inequalities tight.

P is non-degenerate => every solution is a vertex of P. Since P is an n–dimensional polyhedron.

yTv = 0

P: My + v = q; v, y ≥ 0