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Findings

Focus on Contexts, Metrics, and Models

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Focus on Contexts

Considering all contextual information in a model will not necessarily improve the performance.

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Focus on Metrics

The performance of models varies when compared based on different evaluation metrics.

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Focus on Models

The geographical or temporal information is more effective in improving the M model.

Sources

Results

Yelp

Baselines Contexts Pre@5 Pre@15 Rec@5 Rec@15 nDCG@5 nDCG@15
GeoSoCa G 0.0112 0.0105 0.0085 0.0245 0.0109 0.0106
S 0.0135 0.0120 0.0084 0.0214 0.0136 0.0125
C 0.0018 0.0017 0.0013 0.0037 0.0018 0.0018
GS 0.0193 0.0152 0.0111 0.0262 0.0194 0.0165
GC 0.0165 0.0149 0.0120 0.0332 0.0166 0.0155
SC 0.0135 0.0119 0.0082 0.0218 0.0136 0.0124
GSC 0.0211 0.0162 0.0120 0.0277 0.0215 0.0179
FCFKDEAMC G 0.0109 0.0104 0.0082 0.0235 0.0109 0.0106
S 0.0180 0.0141 0.0101 0.0231 0.0181 0.0153
T 0.0165 0.0152 0.0119 0.0324 0.0172 0.0159
SG 0.0198 0.0157 0.0111 0.0266 0.0199 0.0169
ST 0.0194 0.0158 0.0116 0.0261 0.0201 0.0172
GT 0.0208 0.0183 0.0150 0.0391 0.0210 0.0192
SGT 0.0208 0.0168 0.0122 0.0277 0.0215 0.0183
PFMMGM M 0.0085 0.0080 0.0045 0.0141 0.0084 0.0081
G 0.0076 0.0074 0.0057 0.0165 0.0074 0.0073
MG 0.0188 0.0143 0.0144 0.0325 0.0193 0.0158

Gowalla

The gowalla dataset does not include the cateogorical information.
Baselines Contexts Pre@5 Pre@15 Rec@5 Rec@15 nDCG@5 nDCG@15
GeoSoCa G 0.0156 0.0149 0.0095 0.0270 0.0155 0.0150
S 0.0217 0.0192 0.0117 0.0288 0.0221 0.0202
GS 0.0230 0.0203 0.0138 0.0355 0.0233 0.0213
FCFKDEAMC G 0.0164 0.0160 0.0098 0.0285 0.0162 0.0160
S 0.0345 0.0263 0.0170 0.0369 0.0353 0.0292
T 0.0581 0.0455 0.0283 0.0640 0.0593 0.0499
SG 0.0385 0.0298 0.0192 0.0417 0.0391 0.0327
ST 0.0573 0.0404 0.0273 0.0526 0.0596 0.0465
GT 0.0559 0.0437 0.0275 0.0620 0.0568 0.0478
SGT 0.0458 0.0391 0.0260 0.0507 0.0571 0.0450
PFMMGM M 0.0191 0.0147 0.0084 0.0194 0.0231 0.0182
G 0.0196 0.0176 0.0111 0.0291 0.0198 0.0184
MG 0.0275 0.0222 0.0149 0.0356 0.0281 0.0242
Extra

Cite

@article{rahmani2021contextsPOI,
author = {Hossein A. Rahmani, Mohammad Aliannejadi, Mitra Baratchi, Fabio Crestani},
title = {A Systematic Analysis on the Impact of Contextual Information on Point-of-Interest Recommendation},
journal = {ACM Transactions on Information Systems (TOIS)},
volume = {-},
year = {2022},
url = {https://arxiv.org/pdf/2201.08150.pdf},
archivePrefix = {arXiv},
eprint = {XXX}
}
Sources

Framework and Datasets

Source code is available at:   ContextsPOI/Codes

Datasets are available at:   ContextsPOI/Datasets

About Us

Our Group

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Hossein A. Rahmani is a visiting researcher at the WI group, Universtiy College London (UCL). Previously he was a visiting research at USI-IR, Universita della Svizzera Italiana (USI) during this project. He recived his BSc in Software Engineering at the University of Zanjan, Iran, in 2016. Currently, he is a master's student at the University of Zanjan, Iran. He is interested in problems at the intersection of Machine Learning, Data Analysis and BigData as well as Data Mining. He is currently working on Point-of-Interest recommender systems, a project to recommend locations in location-based social networks.
Hossein A. Rahmani - Universtiy College London (UCL)
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Mohammad Aliannejadi is a post-doctoral researcher at IRLab (formerly known as ILPS), the University of Amsterdam in The Netherlands. He obtained his Ph.D. in the Faculty of Informatics, Università della Svizzera italiana (USI) in Lugano, Switzerland. During his Ph.D., he spent four months visiting CIIR at the University of Massachusetts, Amherst, USA. Before his Ph.D., he completed his MSc degree in the Department of Computer Engineering and Information Technologies at Tehran Polytechnic, Tehran, Iran.
Mohammad Aliannejadi - University of Amsterdam
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Mitra Baratchi works as an assistant professor in the Leiden Institute of Advanced Computer Science (LIACS) at Leiden University. She is the founder of the Special Interest Group on Spatio-Temporal Data Mining (SIG-SDTM) and member of the Automated Design of Algorithms (ADA) research group. Previously, she worked as a post doctoral researcher in the Design and Analysis of Communication Systems (DACS) group at University of Twente in the Living Smart campus project.
Mitra Baratchi - Leiden University
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Fabio Crestani is a full professor at the Faculty of Informatics of USI since January 2007 and head of USI-IR research group on information retrieval. Before arriving in Lugano he was a (full) Professor at the University of Strathclyde in Glasgow (UK) since 2000. During that time he was a Visiting Professor at IMAG (France), and spent a year sabbatical at UC Berkeley (USA) and Xerox PARC (USA). In 1997-1999 he was a Postdoctoral Research Fellow at the University of Glasgow (UK), at the International Computer Science Institute in Berkeley (USA), and at the Rutherford Appleton Laboratory (UK).
Fabio Crestani - Universita della Svizzera Italiana
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