Markov Processes MBAP 6100 & EMEN 5600 Survey of Operations Research Professor Stephen Lawrence...
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Transcript of Markov Processes MBAP 6100 & EMEN 5600 Survey of Operations Research Professor Stephen Lawrence...
Markov Processes
MBAP 6100 & EMEN 5600
Survey of Operations Research Professor Stephen Lawrence
Leeds School of Business
University of Colorado
Boulder, CO 80309-0419
OR Course Outline
• Intro to OR• Linear Programming• Solving LP’s• LP Sensitivity/Duality• Transport Problems• Network Analysis• Integer Programming
• Nonlinear Programming• Dynamic Programming
• Game Theory• Queueing Theory
• Markov Processes• Decisions Analysis• Simulation
Whirlwind Tour of OR
Markov Analysis
Andrey A. Markov (born 1856). Early work in probability theory, proved central limit theorem
Agenda for This Week
• Markov Applications– More Markov examples
– Markov decision processes
• Markov Processes– Stochastic processes
– Markov chains
– Future probabilities
– Steady state probabilities
– Markov chain concepts
Stochastic Processes
• Series of random variables {Xt}
• Series indexed over time interval T
• Examples: X1, X2, … , Xt, … , XT represent
– monthly inventory levels– daily closing price for a stock or index– availability of a new technology– market demand for a product
Markov Chains
• Present state Xt is independent of history
– previous states or events have no current or future influence on the current state
• Process will move to other states with known transition probabilities
• Transition probabilities are stationary– probabilities do not change over time
• There exist a finite number of possible states
An Example of a Markov Chain
A small community has two service stations: Petroco and Gasco. The marketing department of Petroco has found that customers switch between stations according to the following transition matrix:
ThisMonth Petroco GascoPetroco 0.60 0.40Gasco 0.20 0.80
Next Month
Note: Rows sum to 1.0 !
=1.0=1.0
Future State Probabilities
Probability that a customer buying from Petroco this month will buy from Petroco next month:
p111 0 6( ) .
p112 0 6 0 6 0 4 0 2 0 44( ) ( . . ) ( . . ) .
In two months:
From Gasco in two months:
p122 0 4 0 8 0 6 0 4 0 56( ) ( . . ) ( . . ) .
Graphical Interpretation
Petroco
Petroco
Gasco
Petroco
Petroco
Gasco
Gasco
0.4
0.40.6
0.6
0.8
0.2
0.6
0.4
0.36
0.24
0.08
0.32
1.00
First Period Second Period
Chapman-Kolmogorov Equations
P(2) = P·P
Let P be the transition matrix for a Markov process. Then the n-step transition probability matrices can be found from:
P(3) = P·P·P
CK Equations for Example
80.020.0
40.060.0
72.028.0
56.044.0
80.020.0
40.060.0
80.020.0
40.060.0
P(1)
P(2)
Starting StatesIn current month, if 70% of customers shop at Petroco and 30% at Gasco, what will be the mix in 2 months?
80.020.0
40.060.0P
s = [0.70 0.30]
sn = s0 P(n)
2
80.020.0
40.060.0
s2 = [0.7 0.3]
= [0.7 0.3]
72.028.0
56.044.0
= [0.39 0.61]
CK Equations in Steady State
80.020.0
40.060.0
72.028.0
56.044.0
80.020.0
40.060.0
80.020.0
40.060.0
67.033.0
67.033.0
80.020.0
40.060.09
P(1)
P(2)
P(9)
Convergence to Steady-State
Prob
1.0
1 105 Period
0.33
If a customer is buys at Petroco this month, what is the long-run probability that the customer will buy at Petroco during any month in the future?
Calculation of Steady State
• Want outcome probabilities equal to incoming probabilities
• Let s = [s1, s2, …, sn] be the vector of steady-state probabilities
• Then we wants = s P
• That is, the output state probabilities do not change from transition to transition (e.g., steady-state!)
Steady-State for Example
80.020.0
40.060.0P
s = [p g]
s = s P
80.020.0
40.060.0[p g] = [p g]
p = 0.6p + 0.2gg = 0.4p + 0.8g
p + g = 1
p = 0.333g = 0.667
Markov Chain Concepts
• Steady-State Probabilities– long-run probability that a process starting in
state i will be found in state j
• First-Passage Time– length of time (steps) in going from state i to j
• Recurrence Time– length of time (steps) to return to state i when
starting in state i
Markov Chain Concepts (cont.)
• Accessible States– State j can be reached from i (pij
(n) > 0)
• Communicating States– State i and j are accessible from one another
• Irreducible Markov chains– All states communicate with one another
Markov Chain Concepts (cont.)
• Recurrent State– A state that will certainly return to itself (fii = 1)
• Transient State– A state that may return to itself (fii < 1)
• Absorbing State– A state the never moves to another state (pii=1)
– A “black hole”
Markov ExamplesMarkov Decision Processes
Matrix Multiplication
qp
nm
dc
ba
dqcndpcm
bqanbpam
Matrix multiplication in Excel…
Machine Breakdown Example
A critical machine in a manufacturing operation breaks down with some frequency. The hourly up-down transition matrix for the machine is shown below. What percentage of the time is the machine operating (up)?
3.07.0
1.09.0Up
Up
Down
Down
Credit History Example
The Rifle, CO Mercantile Department Store wants to analyze the payment behavior of customers who have outstanding accounts. The store’s credit department has determined the following bill payment pattern from historical records:
2.08.0
1.09.0Pay
No PayPay
No Pay
Credit History ContinuedFurther analysis reveals the following credit transition matrix at the Rifle Mercantile:
Pay1 2 Bad
Pay
1
2
Bad
10000
01000
4.06.0000
08.02.000
08.002.000
0
University Graduation ExampleFort Lewis College in Durango has determined that students progress through the college according to the following transition matrix:
100000
010000
8.005.015.0000
01.075.015.000
01.008.01.00
02.0007.01.0
F So J Sr D GF
SoJSrDG