Personalized Air Travel Prediction

Author:

Liu Jie1ORCID,Liu Bin2,Liu Yanchi3,Chen Huipeng1,Feng Lina1,Xiong Hui3,Huang Yalou1

Affiliation:

1. Nankai University, Tianjin, China

2. IBM Thomas J. Watson Research Center, Yorktown Heights, NY

3. Rutgers University, Newark, NJ

Abstract

Human mobility analysis is one of the most important research problems in the field of urban computing. Existing research mainly focuses on the intra-city ground travel behavior modeling, while the inter-city air travel behavior modeling has been largely ignored. Actually, the inter-city travel analysis can be of equivalent importance and complementary to the intra-city travel analysis. Understanding massive passenger-air-travel behavior delivers intelligence for airlines’ precision marketing and related socioeconomic activities, such as airport planning, emergency management, local transportation planning, and tourism-related businesses. Moreover, it provides opportunities to study the characteristics of cities and the mutual relationships between them. However, modeling and predicting air traveler behavior is challenging due to the complex factors of the market situation and individual characteristics of customers (e.g., airlines’ market share, customer membership, and travelers’ intrinsic interests on destinations). To this end, in this article, we present a systematic study on the personalized air travel prediction problem, namely where a customer will fly to and which airline carrier to fly with, by leveraging real-world anonymized Passenger Name Record (PNR) data. Specifically, we first propose a relational travel topic model, which combines the merits of latent factor model with a neighborhood-based method, to uncover the personal travel preferences of aviation customers and the latent travel topics of air routes and airline carriers simultaneously. Then we present a multi-factor travel prediction framework, which fuses complex factors of the market situation and individual characteristics of customers, to predict airline customers’ personalized travel demands. Experimental results on two real-world PNR datasets demonstrate the effectiveness of our approach on both travel topic discovery and customer travel prediction.

Funder

National Science Foundation of Tianjin

National Science Foundation of China

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

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1. Discovering Expert-Level Air Combat Knowledge via Deep Excitatory-Inhibitory Factorized Reinforcement Learning;ACM Transactions on Intelligent Systems and Technology;2024-06-18

2. Tensor Dirichlet Process Multinomial Mixture Model with Graphs for Passenger Trajectory Clustering;Proceedings of the 6th ACM SIGSPATIAL International Workshop on AI for Geographic Knowledge Discovery;2023-11-13

3. Systematic review of passenger demand forecasting in aviation industry;Multimedia Tools and Applications;2023-05-01

4. Data Analytics for Air Travel Data: A Survey and New Perspectives;ACM Computing Surveys;2022-11-30

5. Predicting customer purpose of travel in a low-cost travel environment—A Machine Learning Approach;Machine Learning with Applications;2022-09

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