Long-Distance Person Travel: A Cluster-Based Approach
2020; Linguagem: Inglês
10.32866/001c.17291
ISSN2652-8800
Autores Tópico(s)Urban and Freight Transport Logistics
ResumoMany long-distance person trips (LDPT) modelling efforts fail to accurately represent trips using traditional segmentation approaches. Thus, a clustering approach was used herein to segment an intra-provincial trips data set. The trips’ segments found were short economical getaways (36%), same-day shopping (16%), personal business (14%), visiting friends/relatives (10%), business/casino trips (10%), young adults playing team sports (6%), same-day trips of snow/festival loving young families with kids (3%), costly cottage/camping trips (3%), seniors with medical appointments (2%), and multiple city visitors (1%). The existence of clusters and associated activities shows what segmentation approaches modern models should follow.
Referência(s)