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GIN: Better going safe with personalized routes

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Author(s):
Ladeira, Lucas Zanco ; de Souza, Allan Mariano ; Ramos, Heitor S. ; Villas, Leandro Aparecido ; IEEE
Total Authors: 5
Document type: Journal article
Source: 2020 IEEE SYMPOSIUM ON COMPUTERS AND COMMUNICATIONS (ISCC); v. N/A, p. 6-pg., 2020-01-01.
Abstract

Contextual data characterize distinct regions of the city, allowing them to differentiate them according to security, entertainment, services, among others. Using contextual data to suggest routes helps to understand new aspects of a city that can change users' perceptions of different routes. The impact of each type of contextual data may vary according to the user's profile, which is not taken into account in most of the systems proposed by the literature. Besides, it is necessary to consider the behavior of contextual data, which changes according to the type of data. To tackle the problems mentioned above, we propose a route suggestion system with space-time risk, called GIN. The system consists of three modules, namely: identification of contextual windows, context mapping, and route personalization. Moreover, we propose a strategy to decrease the number of route requests to improve system scalability. The results show that the system adapts to sensitive changes in user's profiles. We obtained promising by using the behavior of contextual data to avoid unnecessary requests. This strategy allowed a reduction of up to 50% of requests made to the system. (AU)

FAPESP's process: 18/23011-1 - GoodWeb: use of social sensing to improve quality of life in cities and leverage new services
Grantee:Thiago Henrique Silva
Support Opportunities: Regular Research Grants