Chaug‐Ing Hsu & Yuh‐Horng Wen (1998)

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Presentation transcript:

Improved grey prediction models for the trans‐pacific air passenger market Chaug‐Ing Hsu & Yuh‐Horng Wen (1998) Transportation Planning and Technology

My Background Boeing Intern 787 Finance Operations (summer 2018) Forecasting production costs and completion dates Short term, day-to-day cost reduction Engineering Mathematics group (summer 2019) Statistical consulting among Boeing subsidiaries Join team after graduation

Introduction This paper is from 1998 Air traffic in the region has grown since then, this unique model continues to be relevant Economic growth of Asian-Pacific countries has increased the amount of air traffic to the region A model is needed to better predict the amount of air travel passengers to the region Many different uses and needs for forecasting in the commercial airline industry Short-term: daily operations Medium-term: market planning Long-term: route and fleet planning

Introduction Models before this paper use: Time series Causal Methods e.g. regression and econometric techniques This paper will attempt to use Grey Theory to create a prediction model for international air traffic. Introduce ideas for residual modification residual Markov-chain sign estimation to increase accuracy of the model Compared to multiple regression models and autoregressive integrated moving-average models

Grey Theory: Background Grey System- a system in which part of the information is known and part is unknown. This uncertainty forms a “grey area” Developed by Deng (Huazhong University of Science and Technology) in 1982 Much of the literature is in Chinese due to its origin Multidisciplinary and generic Deals with systems that have lacking or poor information Many fields and applications including: Systems analysis, data processing, prediction, modelling Accumulated generating operation (AGO)- one of the most important characteristics of grey theory, Main purpose is to reduce the randomness of data. Well fitted to exponential distributions

Grey Theory: Background The Grey Forecasting Model GM(1,1) is a time-series prediction model encompassing a group of differential equations adapted for parameter variance data must be taken at equal intervals and in consecutive order without bypassing any data Assumptions of statistical distribution of the data are not necessary

Data/ Design Choices Market is defined as all passengers travelling on scheduled and charter flights between the United States and most countries in Asia. The growth of airline traffic in Asia parallels the growing importance of the area in political, social, and economic sectors The number of observations is small, growth has occurred in years close to the article It is difficult to collect enough data to use traditional statistical methods Grey theory is used because of the sparseness of the data data must be taken at equal intervals and in consecutive order without bypassing any data

Data/Design Choices 1974-1993 data Reported by Boeing in 1993 1974: k=1, 1993: k=20 Reported by Boeing in 1993 18 of the 20 observations are used for model fitting Remaining 2 used for post-sample result comparisons

Statistical Models

Statistical Models The model is constructed using a first order differential equation: The difference equations vary with time rather than being general Using the Least Squares Method we plug in: Where

Statistical Models Plugging in we get our fitted values Where: Finally, applying the inverse accumulated generating function we get:

Statistical Models Fitted values: Forecast values: Final Model: The forecast values are: 1974 (k=2), 1975 (k=3), …. The original value is: Year = 1974

Statistical Models Updating the model using Markov Chains Similar techniques are used to create the model for residuals AGO- accumulated generating function is created Difference equations are calculated Model is created using the values of k Improved model:

Data Analysis

Conclusion The model created in this paper is more precise than the current existing models Adding the residuals to the grey model increases accuracy The model created is not suitable for use overtime due to problems with convergence It can continually be updated with new data Models were compared with Boeing 1995 forecasts for predictive accuracy Airline traffic in the trans-Pacific market was expected to increase by 11% annually through 2000 China was expected to be higher at 12% Further analysis of specific country pairs can be conducted

THANK YOU! QUESTIONS?