2022
DOI: 10.3390/app12146882
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Resolving Data Sparsity via Aggregating Graph-Based User–App–Location Association for Location Recommendations

Abstract: Personalized location recommendations aim to recommend places that users want to visit, which can save their decision-making time in daily life. However, the recommending task faces a serious data sparsity problem because users have only visited a small part of total places in a city. This problem directly leads to the difficulty in learning latent representations of users and locations. In order to tackle the data sparsity problem and make better recommendations, users’ app usage records in different location… Show more

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Cited by 3 publications
(1 citation statement)
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“…Other graph-based approaches to RSs have been explored in this issue. For example, in [5], the authors propose to use an attributed graph-based representation to encompass several user features in location recommendation problems. Using this additional information, the RS is able to provide a much more accurate latent factor embedding in these highly sparse settings.…”
Section: Theoretical Advances Towards New Recommender Systemsmentioning
confidence: 99%
“…Other graph-based approaches to RSs have been explored in this issue. For example, in [5], the authors propose to use an attributed graph-based representation to encompass several user features in location recommendation problems. Using this additional information, the RS is able to provide a much more accurate latent factor embedding in these highly sparse settings.…”
Section: Theoretical Advances Towards New Recommender Systemsmentioning
confidence: 99%