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Lecture 17 Revenue Management I

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Revenue Management I Overbooking * What is the expected revenue of selling S tickets? ... In this case does the airline want to overbook or not? – PowerPoint PPT presentation

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Title: Lecture 17 Revenue Management I


1
Lecture 17 Revenue Management I Overbooking
2
What is the expected revenue of selling S tickets?
NO shows 0 1 2 3
Revenue
of tickets sold 0 1 2 3
Revenue
3
What is the expected profits of selling S tickets?
  • If S 2

NO shows 0 1 2
Chance
Revenue
Cost
Profit
4
What is the expected costs of selling S tickets?
  • If S 3

NO shows 0 1 2 3
Chance
Revenue
Cost
Profit
5
Summary
  • How does the profit when S2 compares to the
    profit when S3?
  • In this case does the airline want to overbook or
    not?
  • What are the factors that you think will
    influence the decision of overbooking?

6
Important lessons for over-booking
  • The company should be more aggressive in
    over-booking when
  • The probability of no shows _______
  • The revenue from each paying traveler ________
  • The cost of dispensing over-booked customers
    ________

7
Lecture 18 Revenue Management II Advance
Selling
8
Revenue Management for Multiple Customer Segments
  • Two Fundamental Issues
  • How to differentiate the segments?
  • The firm must create barriers or fences such that
    customers willing to pay more are not able to pay
    the lower price
  • Airline examples
  • Saturday night stay
  • Two-week advance reservation
  • Nonrefundable tickets
  • How much demand from different segments should be
    accepted to maximize expected revenue?
  • The firm must limit the amount of capacity
    committed to lower price buyers, or the firm must
    save a certain amount of capacity for the higher
    price segment

9
Revenue Management for Multiple Customer Segments
  • A two-segment problem (Littlewood model)
  • Consider two customer segments
  • High-price buyers
  • Low-price buyers
  • Basic trade-off
  • Commit to an order from a low-price buyer or wait
    for a high-price buyer to come
  • Decision entails two sources of risk or
    uncertainty
  • Spoilage risk capacity is spoiled when low-price
    orders are turned away but high-price orders do
    not materialize
  • Spill risk revenue is spilled when high-price
    buyers have to be turned away because the
    capacity has been committed to low-price buyer
  • How should these risks be managed?

10
Two-Segment Problem
  • Want to balance between
  • Overprotection
  • Saving too much capacity for high-price buyers
    lose guaranteed low-price segment revenue
  • Underprotection
  • Accepting too many low-price buyers forego later
    high-price segment revenue

11
Two-Segment Problem
  • Notation and terminology
  • CH capacity saved for high-price buyers
  • This is also called protection level, i.e., how
    much capacity is protected from being taken by
    low-price buyers
  • The available capacity minus the protection level
    is called the booking limit of low-price buyers
  • XH high-price order demand random variable
  • pH price of high-price segment
  • pL price of low-price segment
  • Question How should CH be determined?

12
Two-Segment Problem
Distribution of high-price segment demand
  • Overprotection probability PrXH CH denoted
    q(CH)
  • Underprotection probability PrXH gt CH 1
    q(CH)

Protection level of high-price segment
  • Consider a marginal increase of one unit of
    protection level for high-price segment.
  • Expected marginal cost the opportunity cost of
    the wasted unit capacity, which could have been
    certainly sold to a low-price buyer
  • pL
  • Expected marginal profit the benefit if the unit
    capacity is later taken by a high-price
    buyer pH 1 q(CH)

13
Two-Segment Problem
  • At the optimal protection level, the net expected
    marginal contribution should be equal to zero
  • pL pH 1 q(CH) 0
  • or,
  • q(CH) 1 pL/pH
  • or,
  • PrXH CH 1 pL/pH

14
Hotel Example
  • Hotel has 210 rooms available for March 29th
  • Now is the end of February and the hotel is
    taking reservations for March 29th
  • Leisure travelers pay 100 per night
  • Business travelers pay 200 per night
  • Therefore 1 pL/pH 1 100/200 0.5

15
Hotel Example
  • Historical demand by business travelers
  • Demand Cumulative Distribution
  • 78 0.488
  • 79 0.501 ³ 0.5
  • 80 0.517
  • The protection level is 79 rooms and the discount
    booking limit is 210 79 131 rooms

16
Two-Segment Problem
  • When XH is a continuous random variable we need
    to find the value for CH that satisfies the
    equality
  • PrXH CH 1 pL/pH
  • When XH is a discrete random variable we need to
    find the smallest value of CH that satisfies the
    inequality
  • PrXH CH ³ 1 pL/pH

17
Two-Segment Problem with Uniform Demand
  • Suppose XH is uniformly distributed between a and
    b
  • Then the condition PrXH CH 1 pL/pH is
  • equivalent to (CH a)/(b a) 1 pL/pH or
  • CH a (1 pL/pH)(b a)

18
Hotel Example with Uniform Demand
  • Suppose XH is uniformly distributed with lower
    limit of 100 rooms and upper limit of 220 rooms
  • This means that a 100 and b 220
  • Consequently the protection level is
  • CH 100 (1 1/2)(220 100) 160 rooms
  • Therefore the low-price booking limit is
  • 210 160 50 rooms

19
Revenue Management for Multiple Customer Segments
  • The discount booking limit depends on
  • Capacity
  • High-price demand probability distribution
  • Fare ratio
  • The discount booking limit does not depend on the
    low-price demand distribution
  • The primary concern of capacity allocation is
    determining the capacity to save for high-price
    buyers
  • Need to think in terms of protection level Q b
    not booking limit b
  • Protection level does not change when Q changes
  • Analysis of booking limits gives insight into a
    companys fare structure

20
Hotel Example with Uniform Demand
  • Suppose XH is uniformly distributed with lower
    limit of 100 rooms and upper limit of 300 rooms
  • This means that a 100 and b 300
  • Consequently the protection level is
  • CH 100 (1 1/2)(300 100) 200 rooms
  • Therefore the low-price booking limit is
  • 210 200 10 rooms

21
Revenue Management for Multiple Customer Segments
  • The discount booking limit depends on
  • Capacity
  • High-price demand probability distribution
  • Fare ratio
  • The discount booking limit does not depend on the
    low-price demand distribution
  • The primary concern of capacity allocation is
    determining the capacity to save for high-price
    buyers
  • Need to think in terms of protection level Q b
    not booking limit b
  • Protection level does not change when Q changes
  • Analysis of booking limits gives insight into a
    companys fare structure

22
Hotel Example with Uniform Demand
  • Suppose XH is uniformly distributed with lower
    limit of 100 rooms and upper limit of 220 rooms
  • This means that a 100 and b 220
  • Suppose Leisure travelers pay 100 per night
  • Business travelers pay 300 per night
  • Consequently the protection level is
  • CH 100 (1 1/3)(220 100) 180 rooms
  • Therefore the low-price booking limit is
  • 210 180 30 rooms

23
  • Next Lecture
  • Overview of Channel Management
  • (Guest Lecture by David Hardwicke)
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