[Forecasting and Revenue Management in Hotel: Case Study of a Hotel]
by
Acknowledgement
I would take this opportunity to thank my research supervisor, family and friends for their support and guidance without which this research would not have been possible.
Declaration
I, [type your full first names and surname here], declare that the contents of this dissertation/thesis represent my own unaided work, and that the dissertation/thesis has not previously been submitted for academic examination towards any qualification. Furthermore, it represents my own opinions and not necessarily those of the University.
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Abstract
In this study we try to explore the concept of forecasting and revenue management in hotel in a holistic context. The main focus of the research is on forecasting and revenue management and its relation with hotel industry. The research also analyzes many aspects of forecasting and revenue management hospitality business and tries to gauge its effect on forecasting and revenue management on hotel. Finally the research describes various factors which are responsible for forecasting and revenue management and tries to describe the overall effect of forecasting and revenue management on hospitality business.
Table of Contents
ACKNOWLEDGEMENT2
DECLARATION3
ABSTRACT4
LIST OF TABLES8
CHAPTER 1: INTRODUCTION10
Background of the study10
Research Aims and Objectives12
Revenue Management12
CHAPTER 2: LITERATURE REVIEW14
History of Revenue Management14
Defining Revenue Management14
Importance of revenue management14
Conditions of Revenue Management15
Revenue Management Formulae and Measurement15
Measurements15
Internal Measurements16
Revenue16
Occupancy Percentage16
Average Daily Rate17
RevPAR- Revenue per Available Room17
Contribution Margin (Net Revenue)17
Identical Net Revenue18
GOPPAR- Gross Operating Profit per Available room18
Overbooking and Cancellations19
External Measurements19
Price Management20
Pricing Strategies23
Price Discrimination23
Pricing Grid25
Rate Optimization32
Price Sensitivity, or Elasticity of Demand32
Price Elasticity of Demand33
Price Elasticity of Revenue34
Practical Elasticity Analysis37
Traditional CVP Analysis38
Distribution Channel Management50
UK Human Resource Management52
HRM research in hotels54
HRM and commitment55
CHAPTER 3: METHODOLOGY57
Research Metho57
Stage 1: Choice hotels157
Results58
FIGURE 20. HOTEL 1 FORECAST ERROR (MAE).59
TABLE 7. BEST NUMBER OF WEEKS FOR EACH FORECASTING METHOD60
Stage 2: Marriott hotels data60
Unconstraining method66
Number of periods to include in forecast67
Which data to use68
Outliers68
Reporting forecast accuracy69
Revenue impact of forecast accuracy70
Level of aggregation71
CHAPTER 4: RESULTS AND DISCUSSION72
Results72
Historical models78
Advanced booking models79
Additive models79
Multiplicative and time-series methods80
Combined forecast methods80
Method comparison82
Forecasting methods used in this paper82
Other forecasting issues83
What to forecast84
CHAPTER 5: CONCLUSION85
REFERENCES91
List of figures
FIGURE 1. REVENUE MANAGEMENT AS A BUSINESS PROCESS (GABOR FORGACS, 2010, P.4)13
FIGURE 2. THE CHALLENGE: HOW TO MANAGE COMPLEXITY?15
FIG 3. HOTEL PRICING STRATEGY25
FIGURE 4. PRICE DISCRIMINATION25
FIGURE 5. PRICE AND DEMAND26
FIGURE 6. PRICING GRID27
FIGURE 7. RATE GRID28
FIGURE 8. BARS 129
FIGURE 9. BARS 229
FIGURE 10. DEMAND LEVEL30
FIGURE 11. DEMAND LEVEL PRICE ELASTICITY OF DEMAND WILL ALWAYS HAVE A NEGATIVE VALUE IN THIS CONTEXT.36
FIGURE 12. EQUATION37
FIGURE 13. REVENUE37
FIGURE 14. REVENUE & ELASTICITY OF REVENUE40
FIGURE 15. Z-VALUE OF 1.5 SHOWN DIAGRAMMATICALLY46
FIGURE 16. OBSERVATIONS TO BE FOUND UNDER THE NORMAL DISTRIBUTION CURVE47
FIGURE 17. BREAK-EVEN CHART OF MARRIOTT HOTEL50
FIGURE 18. NORMAL DISTRIBUTION FOR MARRIOTT HOTEL ROOMS SOLD52
FIGURE 19. PROFIT-VOLUME CHART OF THE MARRIOTT HOTEL55
FIGURE 20. HOTEL 1 FORECAST ERROR (MAE).88
FIG. 21. SAMPLE DATA SET, PROPERTY 1, RATE CATEGORY 1, LENGTH OF STAY 1.90
FIG. 22. BREAKOUT OF LENGTH OF STAY FOR A TYPICAL RATE CATEGORY.90
FIG.23. BREAKOUT OF RATE CATEGORY FOR A TYPICAL LENGTH OF STAY.90
FIG. 24. FORECAST ACCURACY (MAE) FOR PROPERTY 1 (# OF ROOMS=1234), RATE CATEGORY 3 (SUMMARIZED ACROSS ALL SEVEN LOS, AVERAGED ACROSS ALL READING ...