On neighborhood effects in location-based social networks
In this paper, we analyze factors that determine the check-in decisions of users on venues using a location-based social network dataset. Based on a Foursquare dataset constructed from Singapore-based users, we devise a stringent criteria to identify the actual home locations of a subset of users. U...
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sg-smu-ink.sis_research-44642020-03-30T02:05:14Z On neighborhood effects in location-based social networks DOAN, Thanh-Nam CHUA, Freddy Chong-Tat LIM, Ee-Peng In this paper, we analyze factors that determine the check-in decisions of users on venues using a location-based social network dataset. Based on a Foursquare dataset constructed from Singapore-based users, we devise a stringent criteria to identify the actual home locations of a subset of users. Using these users' check-ins, we aim to ascertain the neighborhood effect on the venues visited, compared with the activity level of users. We further formulate the check-in count prediction and check-in prediction tasks. A comprehensive set of features have been defined and they encompass information from users, venues, their neighbors, and friendship networks. We next propose regression and classification models to address the two prediction tasks respectively. Our experiments have shown that the two models especially the classification models outperform the baseline methods when all features are used. We also analyze feature importance and found that despite their similarity, the two prediction tasks actually require different weights on the features as learned by the regression and classification models. Finally, it was found that user's home location for deriving user-venue distance feature is a better feature than user's center of the mass. 2015-12-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/3463 info:doi/10.1109/WI-IAT.2015.155 https://ink.library.smu.edu.sg/context/sis_research/article/4464/viewcontent/148___On_Neighborhood_Effects_in_Location_based_Social_Networks__WI_IAT2015_.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Social network services Cities and towns Predictive models Information systems Business Global Positioning System Computer Sciences Databases and Information Systems |
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Social network services Cities and towns Predictive models Information systems Business Global Positioning System Computer Sciences Databases and Information Systems DOAN, Thanh-Nam CHUA, Freddy Chong-Tat LIM, Ee-Peng On neighborhood effects in location-based social networks |
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In this paper, we analyze factors that determine the check-in decisions of users on venues using a location-based social network dataset. Based on a Foursquare dataset constructed from Singapore-based users, we devise a stringent criteria to identify the actual home locations of a subset of users. Using these users' check-ins, we aim to ascertain the neighborhood effect on the venues visited, compared with the activity level of users. We further formulate the check-in count prediction and check-in prediction tasks. A comprehensive set of features have been defined and they encompass information from users, venues, their neighbors, and friendship networks. We next propose regression and classification models to address the two prediction tasks respectively. Our experiments have shown that the two models especially the classification models outperform the baseline methods when all features are used. We also analyze feature importance and found that despite their similarity, the two prediction tasks actually require different weights on the features as learned by the regression and classification models. Finally, it was found that user's home location for deriving user-venue distance feature is a better feature than user's center of the mass. |
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DOAN, Thanh-Nam CHUA, Freddy Chong-Tat LIM, Ee-Peng |
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DOAN, Thanh-Nam CHUA, Freddy Chong-Tat LIM, Ee-Peng |
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DOAN, Thanh-Nam |
title |
On neighborhood effects in location-based social networks |
title_short |
On neighborhood effects in location-based social networks |
title_full |
On neighborhood effects in location-based social networks |
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On neighborhood effects in location-based social networks |
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On neighborhood effects in location-based social networks |
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on neighborhood effects in location-based social networks |
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Institutional Knowledge at Singapore Management University |
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2015 |
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https://ink.library.smu.edu.sg/sis_research/3463 https://ink.library.smu.edu.sg/context/sis_research/article/4464/viewcontent/148___On_Neighborhood_Effects_in_Location_based_Social_Networks__WI_IAT2015_.pdf |
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