会议专题

Optimization of ticket purchasing strategy based on machine learning

  With the development of the aviation industry and the improvement of peoples living standard,more and more people choose aircraft as their way of travel,but the airline adjusts the price according to the revenue management in real time.The purpose of this paper is to design different decision-making tools from the customers perspective,and to provide customers with the relevant information needed to determine when to purchase a ticket properly.This paper models data using random forest algorithm and builds decision-making tools,taking into account the price fluctuation and amplitude of fluctuation,and suggests the customers when to buy their tickets and when to postpone the purchase.As an application,the paper analyzes air prices for routes from PEK to HET,CAN,SHA,DLC and CSX over the course of two months,and takes into account advance-purchase ticket sales of up to 40 days.By comparing and analyzing the forecasting performances of each model,the experimental results show that random forest model is more reliable in the condition of adding new features.Our study suggests that the model can serve as a basis for customers to make purchase decisions,so as to achieve the purpose of saving money for customers.

decision-making random forest new features

Yuling Li Ping Zhu Sujuan Qin

School of Science,Beijing University of Posts and Telecommunications,Beijing 100876,China;State Key School of Science,Beijing University of Posts and Telecommunications,Beijing 100876,China State Key Laboratory of Networking and Switching Technology,Beijing University of Posts and Telecomm

国际会议

2017 IEEE 3rd Information Technology and Mechatronics Engineering Conference(ITOEC2017)(2017 IEEE 第3届信息技术与机电一体化工程国际学术会议)

重庆

英文

1230-1234

2017-10-03(万方平台首次上网日期,不代表论文的发表时间)