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Hu, C. (2002). Advanced tourism demand forecasting: Artificial neural network and Box-Jenkins modeling. Unpublished Doctoral dissertation, Purdue University, West Lafayette, IN.
ABSTRACT
Hu, Clark, Ph.D. Purdue University, December 2002. Advanced Tourism Demand Forecasting: Artificial Neural Network and Box-Jenkins Modeling. Major Professors: Stephen J. Hiemstra and Joseph A. Ismail.
The global tourism industry has witnessed a significant growth in the past few decades. Many researchers have used different forecasting methods to predict future tourism demand. This study represented a major improvement over previous similar tourism forecasting studies. The author provided a detailed but practical treatment of the Box-Jenkins modeling and two kinds of artificial neural network (backpropagation network and radial basis function network) modeling on tourism demand forecasting across thirty time series (ten origin-destination pairs by three data frequencies). He also gave in-depth discussions on the implementation of the complicated Box-Jenkins methodology as well as the ANN modeling techniques in the context of international tourism demand forecasting. Major literature related to the Box-Jenkins and ANN methods in tourism demand forecasting/modeling in recent years was reviewed. More than 60 tourism demand forecasting models were evaluated. Point forecasts along with their 90% prediction intervals through the final Box-Jenkins and naοve models were generated.
It was found that the more sophisticated Box-Jenkins modeling was more accurate than the simple naοve no-change method to forecast the seasonal international tourism demand in the study. For non-seasonal international tourism demand such as annual time series of tourist arrival data, the naοve no-change method might be a better choice given short available annual series. The author also found that the Box-Jenkins modeling produced a significantly smaller MAPE errors than ANN modeling did and that both BPNN (backpropagation neural network) and RBFNN (radial basis function neural network) modeling techniques performed at the same level based on formal statistical procedures and more sophisticated measures on forecasting performance.
The author also investigated data frequency issues with forecasting techniques. The results of this study suggested that quarterly tourism demand data might be more suitable (likely to perform better) for the ANN modeling when BPNN and RBFNN techniques were considered. Finally, unlike many previous studies in tourism demand forecasting that only used simple ranking comparisons, this study invented an overall performance index (OPI) to assess forecasting techniques overall performance. Both the new performance measure and formal statistical test procedures made the results of comparing different forecasting techniques more robust and convincing.
TABLE OF CONTENTS
LIST OF TABLES ---- x
LIST OF FIGURES ---- xii
ABSTRACT ---- xviii
CHAPTER ONE INTRODUCTION ---- 1 1.1 International Tourism Demand and Forecasting ---- 1 1.2 Development of Tourism Demand Forecasting ---- 4 1.2.1 Tourism Demand Studies ---- 4 1.2.2 Classification and Development in Forecasting Techniques ---- 6 1.3 Advancing Quantitative Techniques for Tourism Demand Forecasting ---- 8 1.4 Problem Statement ---- 10 1.5 Research Objectives and Questions ---- 13 1.6 Organization of the Dissertation ---- 14
CHAPTER TWO LITERATURE REVIEW ---- 16 2.1 Basic Concepts of Tourism Demand ---- 16 2.2 The Worldwide Tourism Demand ---- 18 2.2.1 International tourist/visitor arrivals ---- 20 2.2.2 International tourism receipts ---- 25 2.3 Forecasting Strategy and Horizons ---- 30 2.4 Overview of Forecasting Methods ---- 34 2.4.1 Major Quantitative Forecasting Methods ---- 37 2.4.1.1 Non-casual/Univariate/Time Series Methods ---- 37 2.4.1.1a Naοve No-change Models ---- 37 2.4.1.1b Moving Average (MA) Models ---- 38 2.4.1.1c Autoregressive (AR) Models ---- 41 2.4.1.1d Exponential Smoothing Models ---- 42 2.4.1.2 Box-Jenkins Methodology ARIMA and SARIMA Models ---- 44 2.4.1.2a ARMA (AutoRegressive Moving Average) Process ---- 45 2.4.1.2b ARIMA and SARIMA Models ---- 46 2.4.1.2c General Non-seasonal ARIMA Models ---- 48 2.4.1.2d General Seasonal ARIMA (SARIMA) Models ---- 49 2.4.1.2e Autocorrelation Analysis ---- 50 2.4.1.2f Identify ARIMA/SARIMA Models ---- 52 2.4.1.2g Model Estimation and Selection ---- 56 2.4.1.2h Model Diagnosis ---- 59 2.4.1.3 Casual/Behavioral/Econometric/Multivariate Methods ---- 63 2.4.1.3a Regression Models ---- 63 2.4.1.3b Structural Econometric Models ---- 66 2.4.1.3c Spatial Models ---- 67 2.4.1.4 Other Related Quantitative Methods ---- 70 2.4.2 Major Artificial Intelligence Forecasting Methods ---- 72 2.4.2.1 Artificial Neural Networks (ANNs) ---- 75 2.4.2.2 Fuzzy Logic Systems ---- 75 2.4.2.3 Genetic Algorithms (GAs) ---- 76 2.4.2.4 Rule-Based Expert Systems (ESs) ---- 77 2.5 Accuracy Measures for Quantitative Forecasting Methods ---- 78 2.5.1 Error Magnitude Measures ---- 78 2.5.1.1 Mean Absolute Percentage Error (MAPE) ---- 78 2.5.1.2 Mean Squared Error (MSE) ---- 79 2.5.1.3 Theils U (Theils Inequality Coefficient) ---- 80 2.5.2 Turning Points (or Trend Change) Accuracy ---- 81 2.5.3 Directional (Change) Accuracy (DCA) ---- 84 2.6 Review of Tourism Demand Studies ---- 86 2.6.1 Determinants That Affect Tourism Demand ---- 86 2.6.1.1 Business/Economic Cycles (Origin Country) ---- 87 2.6.1.2 Climates or Natural Disasters (Destination Country) ---- 88 2.6.1.3 Costs of Travel/Transportation (between Origin and Destination Countries) ---- 88 2.6.1.4 Employment (Origin Country) ---- 89 2.6.1.5 Exchange Rates (between Origin and Destination Countries) ---- 89 2.6.1.6 Income (Origin Country) ---- 89 2.6.1.7 International Trade (between Origin and Destination Countries) ---- 90 2.6.1.8 Lagged Dependent Variables/Trend and Fashion (Origin Country) ---- 90 2.6.1.9 Leisure Time (Origin Country) ---- 91 2.6.1.10 Neighborhood Effect (Destination Country) ---- 92 2.6.1.11 Population (Origin and/or Destination Country) ---- 93 2.6.1.12 Relative/Tourism Price (Destination Country) ---- 93 2.6.1.13 Seasonality (Origin and Destination Countries) ---- 94 2.6.1.14 Special Event (Origin and Destination Countries) ---- 95 2.6.1.15 Substitution Effect/Prices (Origin and Destination Countries) ---- 96 2.6.1.16 Supply-side Factors (Destination Country) ---- 98 2.6.1.17 Tourism Marketing Variables (Destination Country) ---- 98 2.6.1.18 Other Qualitative Effects (Origin and Destination Countries) ---- 99 2.6.2 Reviews on Tourism Demand Forecasting Studies ---- 102 2.6.2.1 Tourism Forecasting/Demand Research in Recent Years ---- 102 2.6.2.2 Time Series Forecasting by Box-Jenkins Methodology ---- 115 2.7 Artificial Neural Networks (ANNs) ---- 124 2.7.1 Background of Artificial Neural Networks ---- 125 2.7.2 Supervised Neural Network Models ---- 130 2.7.3 Unsupervised Neural Network Models ---- 131 2.7.4 Artificial Neural Network Applications in Business ---- 133 2.7.5 Designing a Neural Network Forecasting Model ---- 136 2.7.5.1 Step 1: Variable Selection ---- 137 2.7.5.2 Step 2: Data Collection and Audit ---- 138 2.7.5.3 Step 3: Data Preprocessing ---- 138 2.7.5.4 Step 4: Data Partition ---- 139 2.7.5.5 Step 5: Neural Network Topology/Architectures ---- 141 2.7.5.5a Number of Hidden Layers ---- 141 2.7.5.5b Number of Hidden Neurons ---- 141 2.7.5.5c Number of Input and Output Neurons ---- 143 2.7.5.5d Selection of Transfer Functions ---- 145 2.7.5.6 Step 6: Selection of Evaluation Criteria ---- 145 2.7.5.7 Step 7: Neural Network Training and Optimization ---- 146 2.7.5.7a The Number of Training Iterations ---- 146 2.7.5.7b Stopping to Avoid Overtraining ---- 147 2.7.5.7c Training Styles ---- 147 2.7.5.7d Training Algorithm (Backpropagation) ---- 148 2.7.5.7e Learning Rate and Momentum Term ---- 149 2.7.5.8 Step 8: Neural Network Implementation and Maintenance ---- 151 2.8 The Use of ANN Modeling in Tourism Studies ---- 153 2.8.1 Rationales of Applying ANNs In Tourism Forecasting ---- 154 2.8.2 Literature Review of ANNs in Tourism/Hospitality Studies ---- 156 2.9 Comparisons between Conventional and ANN Forecasting Models ---- 161
CHAPTER THREE METHODOLOGY ---- 164 3.1 Research Data ---- 164 3.1.1 Variables Selection ---- 164 3.1.2 Decision on Country Selection ---- 165 3.1.3 Data Sources and Collection ---- 168 3.1.4 Data Structure and Availability ---- 168 3.2 Preliminary Descriptive Analysis ---- 172 3.2.1 Basic Descriptive Statistics ---- 172 3.2.2 Pearsons Correlation Analysis ---- 172 3.2.3 Growth Rate Analysis ---- 172 3.2.4 Graphical Analysis (Data Pattern Inspection) ---- 173 3.2.5 Unit Root Test (Seasonal Augmented Dickey-Fuller Test) ---- 174 3.3 Box-Jenkins Approach ---- 176 3.3.1 Phase I (Visual Inspection, Data Preparation, and Model Identification) ---- 177 3.3.2 Phase II (Model Estimation and Diagnostic Checking) ---- 181 3.3.3 Phase III (Model Evaluation and Forecasting) ---- 183 3.3.4 Decision Rules for Selecting the Best Final Model ---- 183 3.3.5 Producing Prediction Intervals (or Interval Forecasts) ---- 187 3.4 Artificial Neural Network Approach ---- 189 3.4.1 Supervised Network Architecture (Model Designs) ---- 192 3.4.1.1 Back-propagation Neural Network (BPNN) ---- 192 3.4.1.2 Radial Basis Function Neural Network (RBFNN) ---- 196 3.4.1.2 Radial Basis Function Neural Network (RBFNN) ---- 196 3.4.2 Concerns on time series data ---- 199 3.4.3 Data Preprocessing and Partitioning ---- 200 3.4.4 Determination of Transfer Functions ---- 200 3.5 Comparison methods for Forecasting Techniques ---- 201
CHAPTER FOUR RESULTS ---- 203 4.1 Results of Preliminary Analysis ---- 203 4.1.1 Basic Descriptive Statistics ---- 203 4.1.1.1 USA Arrivals ---- 205 4.1.1.2 World Arrivals ---- 205 4.1.2 Pearsons Correlation Analysis ---- 211 4.1.2.1 Between USA and World Series ---- 211 4.1.1.2 Arrival Series among Five Destination Countries ---- 212 4.1.3 Growth Rate Analysis ---- 221 4.1.3.1 Growth of USA Arrivals ---- 221 4.1.3.2 Growth of World Arrivals ---- 223 4.1.4 Graphical Analysis: Exploring Data Patterns by Visual Inspections ---- 223 4.1.4.1 Patterns in Monthly Time Series ---- 223 4.1.4.2 Patterns in Quarterly Time Series ---- 224 4.1.4.3 Patterns in Annual Time Series ---- 224 4.1.5 Augmented Dickey-Fuller Test Results ---- 226 4.2 Results of Box-Jenkins Modeling ---- 228 4.2.1 SARIMA Models for Monthly Series ---- 229 4.2.1.1 USA-Australia Series ---- 229 4.2.1.2 USA-Germany Series ---- 232 4.2.1.3 USA-Italy Series ---- 235 4.2.1.4 USA-Japan Series ---- 237 4.2.1.5 USA-Spain Series ---- 239 4.2.1.6 World-Australia Series ---- 244 4.2.1.7 World-Germany Series ---- 247 4.2.1.8 World-Italy Series ---- 250 4.2.1.9 World-Japan Series ---- 253 4.2.1.10 World-Spain Series ---- 256 4.2.2 SARIMA Models for Quarterly Series ---- 259 4.2.2.1 USA-Australia Series ---- 259 4.2.2.2 USA-Germany Series ---- 261 4.2.2.3 USA-Italy Series ---- 263 4.2.2.4 USA-Japan Series ---- 265 4.2.2.5 USA-Spain Series ---- 267 4.2.2.6 World-Australia Series ---- 269 4.2.2.7 World-Germany Series ---- 271 4.2.2.8 World-Italy Series ---- 273 4.2.2.9 World-Japan Series ---- 275 4.2.2.10 World-Spain Series ---- 277 4.2.3 ARIMA Models for Annual Series ---- 279 4.2.3.1 USA-Australia Series ---- 280 4.2.3.2 USA-Germany Series ---- 283 4.2.3.3 USA-Italy Series ---- 284 4.2.3.4 USA-Japan Series ---- 285 4.2.3.5 USA-Spain Series ---- 287 4.2.3.6 World-Australia Series ---- 288 4.2.3.7 World-Germany Series ---- 291 4.2.3.8 World-Italy Series ---- 292 4.2.3.9 World-Japan Series ---- 293 4.2.3.10 World-Spain Series ---- 294 4.2.4 Turning-Point Forecasting Power (TPFP) ---- 296 4.3 Results of Artificial Neural Network Modeling ---- 298 4.3.1 ANN Modeling on Monthly Time Series ---- 299 4.3.2 ANN Modeling on Quarterly Time Series ---- 319
VOLUME II
CHAPTER FIVE SUMMARY OF FINDINGS ---- 339 5.1 Forecasting Performance of Box-Jenkins Modeling ---- 339 5.2 Forecasting Performance of Two ANN Techniques ---- 356 5.3 Performance Comparisons among Different Forecasting Methods ---- 362 5.3.1 Box-Jenkins vs. Naοve No-Change Models ---- 362 5.3.2 Box-Jenkins vs. Artificial Neural Network Modeling ---- 363 5.3.3 Backpropagation NN vs. Radial Basis Function NN modeling ---- 366 5.4 Performance Comparisons by Different Data Frequencies ---- 367 5.4.1 Data Frequencies and the Box-Jenkins Modeling ---- 368 5.4.2 Data Frequencies and the ANN Modeling ---- 368 5.4.3 Data Frequencies and the BPNN and RBFNN Modeling ---- 369
CHAPTER SIX CONCLUSIONS & RECOMMENDATIONS ---- 371 6.1 Major Contributions of This Study ---- 371 6.2 Concluding Remarks ---- 373 6.3 Limitations of the Study ---- 377 6.4 Recommendations for Future Research ---- 378
BIBLIOGRAPHY ---- 381
APPENDICES Appendix A: A Synopsis of Travel & Tourism Satellite Accounting (TSA) System ---- 433 Appendix B: Bivariate scatterplots (USA vs. World series) for all 5 destinations ---- 439 Appendix C: Growth rate time plots of all data series ---- 447 Appendix D: Time Series Plots for All 30 Data Series ---- 455 Appendix E: An example of SPSS syntax script for SARIMA modeling ---- 470 Appendix F: Computer output example of a SARIMA model ---- 474 Appendix G: Plots of 90% Prediction Intervals (P.I.s) ---- 476
VITA ---- 486
LIST OF TABLES
Table 1. Regional demand profile (by international tourist arrivals), 1990~2000. ---- 24 Table 2. Regional demand profile (by international tourist receipts), 1990~2000. ---- 28 Table 3. Requirements and characteristics of tourism forecasting methods. ---- 36 Table 4. General guidance of expected ACF and PACF patterns. ---- 54 Table 5. Contingency table for calculating DCA (directional change accuracy). ---- 86 Table 6. Contingency table for testing directional accuracy. ---- 86 Table 7. A summary table of tourism forecasting research in the recent years. ---- 103 Table 8. Common procedure in designing a BPNN forecasting model. ---- 137 Table 9. General guidelines for deciding the number of hidden neurons. ---- 142 Table 10. Data structure matrix Unidirectional inbound tourism (arrivals). ---- 170 Table 11. Available inbound tourism data for five destinations in the study. ---- 171 Table 12. Decision rules for selecting final forecasting models. ---- 186 Table 13. Summary of basic descriptive statistics (All series). ---- 204 Table 14. Pearson's correlations between USA and World series. ---- 214 Table 15. Pearson's correlation matrix (Monthly data: From USA). ---- 215 Table 16. Pearson's correlation matrix (Monthly data: From World). ---- 216 Table 17. Pearson's correlation matrix (Quarterly data: From USA). ---- 217 Table 18. Pearson's correlation matrix (Quarterly data: From World). ---- 218 Table 19. Pearson's correlation matrix (Annual data: From USA). ---- 219 Table 20. Pearson's correlation matrix (Annual data: From World). ---- 220 Table 21. Annual growth rate (%) of each data series. ---- 222 Table 22. Summary of visualized data patterns in time series. ---- 225 Table 23. Results of Seasonal ADF tests for unit roots. ---- 227 Table 24. Monthly USA-Australia ex ante forecasts. ---- 231 Table 25. Monthly USA-Germany ex ante forecasts. ---- 234 Table 26. Monthly USA-Italy ex ante forecasts. ---- 236 Table 27. Monthly USA-Japan ex ante forecasts. ---- 239 Table 28. Monthly USA-Spain ex ante forecasts. ---- 242 Table 29. Monthly World-Australia ex ante forecasts. ---- 246 Table 30. Monthly World-Germany ex ante forecasts. ---- 249 Table 31. Monthly World-Italy ex ante forecasts. ---- 252 Table 32. Monthly World-Japan ex ante forecasts. ---- 255 Table 33. Monthly World-Spain ex ante forecasts. ---- 258 Table 34. Quarterly USA-Australia ex ante forecasts. ---- 261 Table 35. Quarterly USA-Germany ex ante forecasts. ---- 263 Table 36. Quarterly USA-Italy ex ante forecasts. ---- 265 Table 37. Quarterly USA-Japan ex ante forecasts. ---- 267 Table 38. Quarterly USA-Spain ex ante forecasts. ---- 269 Table 39. Quarterly World-Australia ex ante forecasts. ---- 271 Table 40. Quarterly World-Germany ex ante forecasts. ---- 273 Table 41. Quarterly World-Italy ex ante forecasts. ---- 275 Table 42. Quarterly World-Japan ex ante forecasts. ---- 277 Table 43. Quarterly World-Spain ex ante forecasts. ---- 279 Table 44. Annual USA-Destination ex ante forecasts. ---- 282 Table 45. Annual World-Destination ex ante forecasts. ---- 290 Table 46. Model identification of Box-Jenkins models (Preliminary). ---- 342 Table 47. Model identification - Final forecasting models. ---- 343 Table 48. In-sample model evaluation of monthly SARIMA models. ---- 344 Table 49. In-sample model evaluation of quarterly SARIMA models. ---- 345 Table 50. In-sample model evaluation of annual ARIMA models (1). ---- 346 Table 51. In-sample model evaluation of annual ARIMA models (2). ---- 347 Table 52. Out-of-sample model evaluation of monthly SARIMA models. ---- 348 Table 53. Out-of-sample model evaluation of quarterly SARIMA models. ---- 349 Table 54. In-sample model evaluation Turning point forecasting power (TPFP). ---- 354 Table 55. Out-of-sample Turning point forecasting power (SARIMA models only). ---- 355 Table 56. Architectures of all BP (backpropagation) neural network models. ---- 358 Table 57. Architectures of all RBF (Radial basis function) neural network models. ---- 359 Table 58. Monthly time series Ex post evaluations of all ANN models. ---- 360 Table 59. Quarterly time series Ex post evaluations of all ANN models. ---- 361 Table 60. Box-Jenkins vs. ANN Modeling (winning counts). ---- 364 Table 61. Box-Jenkins vs. ANN modeling (Overall performance indices). ---- 365 Table 62. Box-Jenkins vs. ANN modeling (ANOVA). ---- 365 Table 63. Box-Jenkins vs. BPNN/RBFNN modeling (ANOVA). ---- 365 Table 64. BPNN vs. RBFNN modeling (Overall performance indices). ---- 366 Table 65. BPNN vs. RBFNN modeling (ANOVA). ---- 367 Table 66. Data frequencies and the Box-Jenkins technique. ---- 368 Table 67. Data frequencies and the ANN technique. ---- 369 Table 68. Data frequencies and the BPNN technique. ---- 369 Table 69. Data frequencies and the RBFNN technique. ---- 370
LIST OF FIGURES
Figure 1. Total number of international tourist arrivals (Worldwide), 1970~2000. ---- 23 Figure 2. International tourism receipts (Worldwide), 1990~2000. ---- 26 Figure 3. World tourism growth for the past five decades, 1950~2000. ---- 29 Figure 4. Time horizon of ex post and ex ante forecasts. ---- 32 Figure 5. One-step vs. h-step ahead forecast. ---- 34 Figure 6. Schematic representation of Box-Jenkins methodology. ---- 62 Figure 7. Strength of intelligent systems by five key features. ---- 74 Figure 8. Graphical representation of tourism demand determinants. ---- 101 Figure 9. An illustration of the biological neuron. ---- 126 Figure 10. An illustration of the artificial neuron. ---- 126 Figure 11. Historical development of the ANN research. ---- 129 Figure 12. The supervised learning paradigm. ---- 132 Figure 13. The unsupervised learning paradigm. ---- 132 Figure 14. Data partition approaches for ANN forecasting models. ---- 140 Figure 15. An example of univariate ANN forecasting model ---- 144 Figure 16. An example of multivariate ANN forecasting model. ---- 144 Figure 17. Training strategy: Learning rate and momentum. ---- 152 Figure 18. Conventional vs. ANN forecasting process. ---- 163 Figure 19. Geographical illustration of 6 countries studied. ---- 167 Figure 20. The flowchart of ARIMA modeling in the study. ---- 178 Figure 21. Model identification in seasonal ARIMA modeling. ---- 180 Figure 22. An illustration of a BPNN(4-7-1) forecasting model. ---- 191 Figure 23. Topology of the BPNN forecasting model in the study. ---- 195 Figure 24. Topology of the RBFNN forecasting model in the study. ---- 195 Figure 25. Means and medians of monthly USA arrivals. ---- 207 Figure 26. Means and medians of quarterly USA arrivals. ---- 207 Figure 27. Means and medians of annual USA arrivals. ---- 208 Figure 28. Means and medians of monthly World arrivals. ---- 208 Figure 29. Means and median of quarterly World arrivals. ---- 209 Figure 30. Means and medians of annual World arrivals. ---- 209 Figure 31. USA market for all five destination countries from 1966 to 1999. ---- 210 Figure 32. Forecasts of the monthly USA-AUS model: SARIMA(2,0,0)(1,1,0)12. ---- 230 Figure 33. Forecasts of the monthly USA-GER model: SARIMA(1,0,1)(1,1,1)12. ---- 233 Figure 34. Forecasts of the monthly USA-ITA model: SARIMA(1,0,1)(1,1,0)12. ---- 237 Figure 35. Forecasts of the monthly USA-JAP model: SARIMA(2,0,0)(0,1,1)12. ---- 238 Figure 36. Forecasts of the monthly USA-SPA model: SI(1)12. ---- 243 Figure 37. Forecasts of the monthly USA-SPA model: SARIMA(1,0,1)(0,1,0)12. ---- 243 Figure 38. Forecasts of the monthly WLD-AUS model: SARIMA(2,0,0)(2,1,0)12. ---- 247 Figure 39. Forecasts of the monthly WLD-GER model: SARIMA(1,0,1)(1,1,0)12. ---- 250 Figure 40. Forecasts of the monthly WLD-ITA model: SARIMA(2,0,0)(2,1,0)12. ---- 253 Figure 41. Forecasts of the monthly WLD-JAP model: SARIMA(2,0,0)(2,1,0)12. ---- 256 Figure 42. Forecasts of the monthly WLD-SPA model: SARIMA(2,0,0)(2,1,0)12. ---- 259 Figure 43. Forecasts of the quarterly USA-AUS model: SARIMA(1,0,0)(0,1,0)4. ---- 260 Figure 44. Forecasts of the quarterly USA-GER model: SARIMA(1,0,0)(1,1,1)4. ---- 262 Figure 45. Forecasts of the quarterly USA-ITA model: SARIMA(1,0,1)(0,1,1)4. ---- 264 Figure 46. Forecasts of the quarterly USA-JAP model: SARIMA(0,0,2)(0,1,1)4. ---- 266 Figure 47. Forecasts of the quarterly USA-SPA model: SARIMA(0,0,2)(1,1,0)4. ---- 268 Figure 48. Forecasts of the quarterly WLD-AUS model: SARIMA(1,0,0)(2,1,0)4. ---- 271 Figure 49. Forecasts of the quarterly WLD-GER model: SARIMA(2,0,0)(1,1,0)4. ---- 273 Figure 50. Forecasts of the quarterly WLD-ITA model: SARIMA(0,0,1)(0,1,1)4. ---- 275 Figure 51. Forecasts of the quarterly WLD-JAP model: SARIMA(1,0,0)(2,1,0)4. ---- 277 Figure 52. Forecasts of the quarterly WLD-SPA model: SARIMA(1,0,0)(0,1,0)4. ---- 279 Figure 53. Forecasts of the annual USA-AUS models. ---- 281 Figure 54. Forecasts of the annual USA-GER models. ---- 284 Figure 55. Forecasts of the annual USA-ITA models. ---- 285 Figure 56. Forecasts of the annual USA-JAP models. ---- 286 Figure 57. Forecasts of the annual USA-SPA models. ---- 288 Figure 58. Forecasts of the annual WLD-AUS models. ---- 289 Figure 59. Forecasts of the annual WLD-GER models. ---- 292 Figure 60. Forecasts of the annual WLD-ITA models. ---- 293 Figure 61. Forecasts of the annual WLD-JAP models. ---- 294 Figure 62. Forecasts of the annual WLD-SPA models. ---- 296 Figure 63. MUA series by BPNN Testing. ---- 299 Figure 64. MUA series by BPNN Training & validation ---- 299 Figure 65. MUA series by RBFNN Testing. ---- 300 Figure 66. MUA series by RBFNN Training & validation ---- 300 Figure 67. MUG series by BPNN Testing. ---- 301 Figure 68. MUG series by BPNN Training & validation. ---- 301 Figure 69. MUG series by RBFNN Testing. ---- 302 Figure 70. MUG series by RBFNN Training & validation. ---- 302 Figure 71. MUI series by BPNN Testing. ---- 303 Figure 72. MUI series by BPNN Training & validation. ---- 303 Figure 73. MUI series by RBFNN Testing. ---- 304 Figure 74. MUI series by RBFNN Training & validation. ---- 304 Figure 75. MUJ series by BPNN Testing. ---- 305 Figure 76. MUJ series by BPNN Training & validation. ---- 305 Figure 77. MUJ series by RBFNN Testing. ---- 306 Figure 78. MUJ series by RBFNN Training & validation. ---- 306 Figure 79. MUS series by BPNN Testing. ---- 307 Figure 80. MUS series by BPNN Training & validation. ---- 307 Figure 81. MUS series by RBFNN Testing. ---- 308 Figure 82. MUS series by RBFNN Training & validation. ---- 308 Figure 83. MWA series by BPNN Testing. ---- 309 Figure 84. MWA series by BPNN Training & validation. ---- 309 Figure 85. MWA series by RBFNN Testing. ---- 310 Figure 86. MWA series by RBFNN Training & validation. ---- 310 Figure 87. MWG series by BPNN Testing. ---- 311 Figure 88. MWG series by BPNN Training & validation. ---- 311 Figure 89. MWG series by RBFNN Testing. ---- 312 Figure 90. MWG series by RBFNN Training & validation. ---- 312 Figure 91. MWI series by BPNN Testing. ---- 313 Figure 92. MWI series by BPNN Training & validation. ---- 313 Figure 93. MWI series by RBFNN Testing. ---- 314 Figure 94. MWI series by RBFNN Training & validation. ---- 314 Figure 95. MWJ series by BPNN Testing. ---- 315 Figure 96. MWJ series by BPNN Training & validation. ---- 315 Figure 97. MWJ series by RBFNN Testing. ---- 316 Figure 98. MWJ series by RBFNN Training & validation. ---- 316 Figure 99. MWS series by BPNN Testing. ---- 317 Figure 100. MWS series by BPNN Training & validation. ---- 317 Figure 101. MWS series by RBFNN Testing. ---- 318 Figure 102. MWS series by RBFNN Training & validation. ---- 318 Figure 103. QUA series by BPNN Testing. ---- 319 Figure 104. QUA series by BPNN Training & validation. ---- 319 Figure 105. QUA series by RBFNN Testing. ---- 320 Figure 106. QUA series by RBFNN Training & validation. ---- 320 Figure 107. QUG series by BPNN Testing. ---- 321 Figure 108. QUG series by BPNN Training & validation. ---- 321 Figure 109. QUG series by RBFNN Testing. ---- 322 Figure 110. QUG series by RBFNN Training & validation. ---- 322 Figure 111. QUI series by BPNN Testing. ---- 323 Figure 112. QUI series by BPNN Training & validation. ---- 323 Figure 113. QUI series by RBFNN Testing. ---- 324 Figure 114. QUI series by RBFNN Training & validation. ---- 324 Figure 115. QUJ series by BPNN Testing. ---- 325 Figure 116. QUJ series by BPNN Training & validation. ---- 325 Figure 117. QUJ series by RBFNN Testing. ---- 326 Figure 118. QUJ series by RBFNN Training & validation. ---- 326 Figure 119. QUS series by BPNN Testing. ---- 327 Figure 120. QUS series by BPNN Training & validation. ---- 327 Figure 121. QUS series by RBFNN Testing. ---- 328 Figure 122. QUS series by RBFNN Training & validation. ---- 328 Figure 123. QWA series by BPNN Testing. ---- 329 Figure 124. QWA series by BPNN Training & validation. ---- 329 Figure 125. QWA series by RBFNN Testing. ---- 330 Figure 126. QWA series by RBFNN Training & validation. ---- 330 Figure 127. QWG series by BPNN Testing. ---- 331 Figure 128. QWG series by BPNN Training & validation. ---- 331 Figure 129. QWG series by RBFNN Testing. ---- 332 Figure 130. QWG series by RBFNN Training & validation. ---- 332 Figure 131. QWI series by BPNN Testing. ---- 333 Figure 132. QWI series by BPNN Training & validation. ---- 333 Figure 133. QWI series by RBFNN Testing. ---- 334 Figure 134. QWI series by RBFNN Training & validation. ---- 334 Figure 135. QWJ series by BPNN Testing. ---- 335 Figure 136. QWJ series by BPNN Training & validation. ---- 335 Figure 137. QWJ series by RBFNN Testing. ---- 336 Figure 138. QWJ series by RBFNN Training & validation. ---- 336 Figure 139. QWS series by BPNN Testing. ---- 337 Figure 140. QWS series by BPNN Training & validation. ---- 337 Figure 141. QWS series by RBFNN Testing. ---- 338 Figure 142. QWS series by RBFNN Training & validation. ---- 338 Figure 143. Illustration of two concepts in TSA system. ---- 437 Figure 144. Structure of the TSA system. ---- 438 Figure 145. Bivariate scatterplot of monthly Australia series. ---- 439 Figure 146. Bivariate scatterplot of monthly Germany series. ---- 439 Figure 147. Bivariate scatterplot of monthly Italy series. ---- 440 Figure 148. Bivariate scatterplot of monthly Japan series. ---- 440 Figure 149. Bivariate scatterplot of monthly Spain series. ---- 441 Figure 150. Bivariate scatterplot of quarterly Australia series. ---- 441 Figure 151. Bivariate scatterplot of quarterly Germany series. ---- 442 Figure 152. Bivariate scatterplot of quarterly Italy series. ---- 442 Figure 153. Bivariate scatterplot of quarterly Japan series. ---- 443 Figure 154. Bivariate scatterplot of quarterly Spain series. ---- 443 Figure 155. Bivariate scatterplot of annual Australia series. ---- 444 Figure 156. Bivariate scatterplot of annual Germany series. ---- 444 Figure 157. Bivariate scatterplot of annual Italy series. ---- 445 Figure 158. Bivariate scatterplot of annual Japan series. ---- 445 Figure 159. Bivariate scatterplot of annual Spain series. ---- 446 Figure 160. Growth rates: Monthly arrivals to Australia. ---- 447 Figure 161. Growth rates: Monthly arrivals to Germany. ---- 447 Figure 162. Growth rates: Monthly arrivals to Italy. ---- 448 Figure 163. Growth rates: Monthly arrivals to Japan. ---- 448 Figure 164. Growth rates: Monthly arrivals to Spain. ---- 449 Figure 165. Growth rates: Quarterly arrivals to Australia. ---- 449 Figure 166. Growth rates: Quarterly arrivals to Germany. ---- 450 Figure 167. Growth rates: Quarterly arrivals to Italy. ---- 450 Figure 168. Growth rates: Quarterly arrivals to Japan. ---- 451 Figure 169. Growth rates: Quarterly arrivals to Spain. ---- 451 Figure 170. Growth rates: Annual arrivals to Australia. ---- 452 Figure 171. Growth rates: Annual arrivals to Germany. ---- 452 Figure 172. Growth rates: Annual arrivals to Italy. ---- 453 Figure 173. Growth rates: Annual arrivals to Japan. ---- 453 Figure 174. Growth rates: Annual arrivals to Spain. ---- 454 Figure 175. Monthly arrivals from USA to Australia. ---- 455 Figure 176. Monthly arrivals from World to Australia. ---- 455 Figure 177. Monthly arrivals from USA to Germany. ---- 456 Figure 178. Monthly arrivals from World to Germany. ---- 456 Figure 179. Monthly arrivals from USA to Italy. ---- 457 Figure 180. Monthly arrivals from World to Italy. ---- 457 Figure 181. Monthly arrivals from USA to Japan. ---- 458 Figure 182. Monthly arrivals from World to Japan. ---- 458 Figure 183. Monthly arrivals from USA to Spain. ---- 459 Figure 184. Monthly arrivals from World to Spain. ---- 459 Figure 185. Quarterly arrivals from USA to Australia. ---- 460 Figure 186. Quarterly arrivals from World to Australia. ---- 460 Figure 187. Quarterly arrivals from USA to Germany. ---- 461 Figure 188. Quarterly arrivals from World to Germany. ---- 461 Figure 189. Quarterly arrivals from USA to Italy. ---- 462 Figure 190. Quarterly arrivals from World to Italy. ---- 462 Figure 191. Quarterly arrivals from USA to Japan. ---- 463 Figure 192. Quarterly arrivals from World to Japan. ---- 463 Figure 193. Quarterly arrivals from USA to Spain. ---- 464 Figure 194. Quarterly arrivals from World to Spain. ---- 464 Figure 195. Annual arrivals from USA to Australia. ---- 465 Figure 196. Annual arrivals from World to Australia. ---- 465 Figure 197. Annual arrivals from USA to Germany. ---- 466 Figure 198. Annual arrivals from World to Germany. ---- 466 Figure 199. Annual arrivals from USA to Italy. ---- 467 Figure 200. Annual arrivals from World to Italy. ---- 467 Figure 201. Annual arrivals from USA to Japan. ---- 468 Figure 202. Annual arrivals from World to Japan. ---- 468 Figure 203. Annual arrivals from USA to Spain. ---- 469 Figure 204. Annual arrivals from World to Spain. ---- 469 Figure 205. Residual ACF plot of the monthly USA-GER SARIMA model. ---- 475 Figure 206. Residual PACF plot of the monthly USA-GER SARIMA model. ---- 475 Figure 207. 90% P.I. S/ARIMA model for USAAUS monthly series. ---- 476 Figure 208. 90% P.I. SARIMA model for USAGER monthly series. ---- 476 Figure 209. 90% P.I. SARIMA model for USAITA monthly series. ---- 477 Figure 210. 90% P.I. SARIMA model for USAJAP monthly series. ---- 477 Figure 211. 90% P.I. SARIMA model for USASPA monthly series. ---- 478 Figure 212. 90% P.I. SARIMA model for WLDAUS monthly series. ---- 478 Figure 213. 90% P.I. SARIMA model for WLDGER monthly series. ---- 479 Figure 214. 90% P.I. SARIMA model for WLDITA monthly series. ---- 479 Figure 215. 90% P.I. SARIMA model for WLDJAP monthly series. ---- 480 Figure 216. 90% P.I. SARIMA model for WLDSPA monthly series. ---- 480 Figure 217. 90% P.I. SARIMA model for USAAUS quarterly series. ---- 481 Figure 218. 90% P.I. SARIMA model for USAGER quarterly series. ---- 481 Figure 219. 90% P.I. SARIMA model for USAITA quarterly series. ---- 482 Figure 220. 90% P.I. SARIMA model for USAJAP quarterly series. ---- 482 Figure 221. 90% P.I. SARIMA model for USASPA quarterly series. ---- 483 Figure 222. 90% P.I. SARIMA model for WLDAUS quarterly series. ---- 483 Figure 223. 90% P.I. SARIMA model for WLDGER quarterly series. ---- 484 Figure 224. 90% P.I. SARIMA model for WLDITA quarterly series. ---- 484 Figure 225. 90% P.I. SARIMA model for WLDJAP quarterly series. ---- 485 Figure 226. 90% P.I. SARIMA model for WLDSPA quarterly series. ---- 485
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