Due to the recent explosive growth of location-aware services based on mobile devices, predicting the next places of a user is of increasing importance to enable proactive information services. In this paper, we introduce a data-driven framework that aims to predict the user's next places using his/her past visiting patterns analyzed from mobile device logs. Specifically, the notion of the spatiotemporal-periodic (STP) pattern is proposed to capture the visits with spatiotemporal periodicity by focusing on a detail level of location for each individual. Subsequently, we present algorithms that extract the STP patterns from a user's past visiting behaviors and predict the next places based on the patterns. The experiment results obtained by using a real-world dataset show that the proposed methods are more effective in predicting the user's next places than the previous approaches considered in most cases.
%0 Journal Article
%1 lee2016next
%A Lee, S
%A Lim, J
%A Park, J
%A Kim, K
%D 2016
%J Sensors (Basel)
%K device diss geo inthesis log mining mobile next place prediction spatial temporal
%N 2
%P 145-145
%R 10.3390/s16020145
%T Next Place Prediction Based on Spatiotemporal Pattern Mining of Mobile Device Logs
%U http://europepmc.org/abstract/med/26805850
%V 16
%X Due to the recent explosive growth of location-aware services based on mobile devices, predicting the next places of a user is of increasing importance to enable proactive information services. In this paper, we introduce a data-driven framework that aims to predict the user's next places using his/her past visiting patterns analyzed from mobile device logs. Specifically, the notion of the spatiotemporal-periodic (STP) pattern is proposed to capture the visits with spatiotemporal periodicity by focusing on a detail level of location for each individual. Subsequently, we present algorithms that extract the STP patterns from a user's past visiting behaviors and predict the next places based on the patterns. The experiment results obtained by using a real-world dataset show that the proposed methods are more effective in predicting the user's next places than the previous approaches considered in most cases.
@article{lee2016next,
abstract = {Due to the recent explosive growth of location-aware services based on mobile devices, predicting the next places of a user is of increasing importance to enable proactive information services. In this paper, we introduce a data-driven framework that aims to predict the user's next places using his/her past visiting patterns analyzed from mobile device logs. Specifically, the notion of the spatiotemporal-periodic (STP) pattern is proposed to capture the visits with spatiotemporal periodicity by focusing on a detail level of location for each individual. Subsequently, we present algorithms that extract the STP patterns from a user's past visiting behaviors and predict the next places based on the patterns. The experiment results obtained by using a real-world dataset show that the proposed methods are more effective in predicting the user's next places than the previous approaches considered in most cases.},
added-at = {2017-02-04T22:43:41.000+0100},
author = {Lee, S and Lim, J and Park, J and Kim, K},
biburl = {https://www.bibsonomy.org/bibtex/2337a142b994c39da32c9b6b5f3924839/becker},
doi = {10.3390/s16020145},
interhash = {59eccca1783d2f19e235ad121c21969e},
intrahash = {337a142b994c39da32c9b6b5f3924839},
journal = {Sensors (Basel)},
keywords = {device diss geo inthesis log mining mobile next place prediction spatial temporal},
month = jan,
number = 2,
pages = {145-145},
pmid = {26805850},
timestamp = {2017-02-04T22:43:41.000+0100},
title = {Next Place Prediction Based on Spatiotemporal Pattern Mining of Mobile Device Logs},
url = {http://europepmc.org/abstract/med/26805850},
volume = 16,
year = 2016
}