2023
DOI: 10.1109/tbdata.2022.3204759
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Modeling Spatial Trajectories Using Coarse-Grained Smartphone Logs

Abstract: Current approaches for points-of-interest (POI) recommendation learn the preferences of a user via the standard spatial features such as the POI coordinates, the social network, etc. These models ignore a crucial aspect of spatial mobility -every user carries their smartphones wherever they go. In addition, with growing privacy concerns, users refrain from sharing their exact geographical coordinates and their social media activity. In this paper, we present REVAMP, a sequential POI recommendation approach tha… Show more

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“…In the context of spatial trajectories and linguistic steganalysis, Gupta and Bedathur [22] and Yang et al [23] offered insights into modeling spatial trajectories using coarse-grained smartphone logs and linguistic steganalysis toward social networks. These studies reflect the expanding scope of content moderation to include geographical and linguistic analyses.…”
Section: Related Studymentioning
confidence: 99%
“…In the context of spatial trajectories and linguistic steganalysis, Gupta and Bedathur [22] and Yang et al [23] offered insights into modeling spatial trajectories using coarse-grained smartphone logs and linguistic steganalysis toward social networks. These studies reflect the expanding scope of content moderation to include geographical and linguistic analyses.…”
Section: Related Studymentioning
confidence: 99%