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izvor podataka: crosbi

Crowdsourcing mobility insights : reflection of attitude based segments on high resolution mobility behaviour data (CROSBI ID 239350)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Šemanjski, Ivana ; Gautama, Sidharta Crowdsourcing mobility insights : reflection of attitude based segments on high resolution mobility behaviour data // Transportation research part c-emerging technologies, 71 (2016), 434-446. doi: 10.1016/j.trc.2016.08.016

Podaci o odgovornosti

Šemanjski, Ivana ; Gautama, Sidharta

engleski

Crowdsourcing mobility insights : reflection of attitude based segments on high resolution mobility behaviour data

Recently, the use of market segmentation techniques to promote sustainable transport has significantly increased. Populations are segmented into meaningful groups that share similar attitudes and preferences. This segmentation provides valuable information about how policy options, such as pricing measures or advertising campaigns, should be designed and promoted in order to successfully target different user groups. In this paper, we aim to bridge between psychological, social marketing and ICT research in the field of transportation. We explore how attitude based segments are reflected in high resolution mobility behaviour data, crowdsourced via mobile phones. We use support vector machines to map eight attitudinal segments, as defined under the European project SEGMENT, to the n dimensional space defined by crowdsourced data. The success rate of the proposed approach is 98.9%. This demonstrates the applicability of the method as a way to automatically map attitudinal segments to a wider population based on observed mobility data instead of using explicit attitudinal surveys. In addition, the proposed approach can facilitate the delivery of personalised target messages to individuals (e.g. via smartphones) or at target locations where users, belonging to specific segment, are located at specific time windows since the data includes the time-space indications.

BIG DATA ; travel behavior ; patterns ; Crowdsourcing mobility behaviour ; Attitude based segmentation techniques ; Smart city mobility ; Support vector machines ; Smartphone based mobility data collection ; Data-driven mobility management

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Podaci o izdanju

71

2016.

434-446

objavljeno

0968-090X

10.1016/j.trc.2016.08.016

Povezanost rada

Tehnologija prometa i transport

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