Back-Propagation Neural Network Combined With a Particle Swarm Optimization Algorithm for Travel Package Demand Forecasting

Travel agency operation must be capable of judging tourism demands on the market to formulate procurement and sales plans. However, a number of travel agencies, lacking the ability to judge market tourism demand, take substantial risks in their purchasing decisions. Therefore, in this study we used the particle swarm optimization algorithm combined with a back-propagation neural network (PSOBPN) to establish a demand estimation model and we used gray relational analysis to select factors highly correlated to travel demand to use as training and prediction input factors in the prediction model. A comparison of the prediction results with the back-propagation neural network (BPN), multiple regression analysis (MRA), and the travel agency experience forecasting method indicated that the PSOBPN and BPN prediction accuracy were superior to that of MRA and the experience forecasting method adopted by travel agencies. The accuracy of both PSOBPN and BPN were equal. The convergence speed during PSOBPN training was superior to that of BPN. PSOBPN is a superior prediction model when considering both prediction accuracy and model training convergence speed. It can provide decision makers for travel agencies with reliable and highly efficient data analysis.

[1]  Han Chen Huang Using a Hybrid Neural Network to Predict the Torsional Strength of Reinforced Concrete Beams , 2012 .

[2]  Chaohui Wang,et al.  Predicting tourism demand using fuzzy time series and hybrid grey theory. , 2004 .

[3]  J. Deng,et al.  Introduction to Grey system theory , 1989 .

[4]  Yiu-Man Chan,et al.  Forecasting Tourism: A Sine Wave Time Series Regression Approach , 1993 .

[5]  Lingling Song Improved Intelligent Method for Traffic Flow Prediction Based on Artificial Neural Networks and Ant Colony Optimization , 2012 .

[6]  Russell C. Eberhart,et al.  A new optimizer using particle swarm theory , 1995, MHS'95. Proceedings of the Sixth International Symposium on Micro Machine and Human Science.

[7]  Shaio Yan Huang,et al.  Applying Intellectual Capital on Financial Distress Prediction Model in Taiwan Information Technology and Electronic Industry , 2012 .

[8]  Han-Chen Huang Using a Hybrid Neural Network to Predict the NTD/USD Exchange Rate , 2012 .

[9]  Bai Yu The Development of Fuzzy Neural Network , 2007 .

[10]  Mauro Birattari,et al.  Swarm Intelligence , 2012, Lecture Notes in Computer Science.

[12]  Martin Mandischer A comparison of evolution strategies and backpropagation for neural network training , 2002, Neurocomputing.

[13]  Yuhui Shi,et al.  Particle swarm optimization: developments, applications and resources , 2001, Proceedings of the 2001 Congress on Evolutionary Computation (IEEE Cat. No.01TH8546).

[14]  Rob Law,et al.  A neural network model to forecast Japanese demand for travel to Hong Kong , 1999 .

[15]  Fong-Lin Chu,et al.  Forecasting tourism: a combined approach , 1998 .

[16]  End Trimester,et al.  Production & Operation Management , 2011 .