Inferring High Quality Co-Travel Networks
Youfang Lin, Xuguang Jia, Mingjie Lin, Steve Gregory, Huaiyu Wan,, Zhihao Wu

TL;DR
This paper introduces a novel method to infer high-quality co-travel social networks from passenger booking data, revealing unique network characteristics and aiding industry understanding of passenger behaviors.
Contribution
It proposes a new approach to construct co-travel networks from PNR data and analyzes their properties, contributing a new social network type for travel behavior research.
Findings
Effective inference of co-travel networks from PNR data.
Co-travel networks exhibit sparsity and high aggregation.
Potential to improve passenger service and understand travel behaviors.
Abstract
Social networks provide a new perspective for enterprises to better understand their customers and have attracted substantial attention in industry. However, inferring high quality customer social networks is a great challenge while there are no explicit customer relations in many traditional OLTP environments. In this paper, we study this issue in the field of passenger transport and introduce a new member to the family of social networks, which is named Co-Travel Networks, consisting of passengers connected by their co-travel behaviors. We propose a novel method to infer high quality co-travel networks of civil aviation passengers from their co-booking behaviors derived from the PNRs (Passenger Naming Records). In our method, to accurately evaluate the strength of ties, we present a measure of Co-Journey Times to count the co-travel times of complete journeys between passengers. We…
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Taxonomy
TopicsPeer-to-Peer Network Technologies · Complex Network Analysis Techniques · Caching and Content Delivery
