Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
research-article

SocialMix

Published: 01 February 2018 Publication History

Abstract

Traditionally, location suggestion systems have employed collaborative filtering model to make recommendations for users based on data gathered from users with similar interests, demographics, and check-in records. However, these techniques fail to take into account on very important element present in online social networks, the online relationships that these users maintain. Arguably, this is the most important aspect of their online profiles, often more revealing than their self reported personal interests and check-in records. Aiming to improve the accuracy and novelty of recommendations, this research proposes a hybrid location suggestion algorithm, called SocialMix, of which, takes into full consideration a users familiarity and preference (interest) similarity, along with relationships. In the first part of this study, we compute the degrees of familiarity between users using three feature variables: the number of mutual friends, the Jaccard index and cosine similarity. In order to determine the weights of the these feature variables, maximum likelihood estimation used, and then the features are fit to a Logistic Regression model in order to calculate the degrees of familiarity. The second part of this research we present a new method for calculating similarity between individuals by integrating users familiarity and preference similarity. This allows us to introduce a new location interest degree calculation method on the hybrid similarity. Extensive experiments were conducted on several real datasets. The performance of SocialMix was analyzed for both accuracy and time complexity using the following metrics: MAE (mean absolute error), RMSE (root mean square error), Precision, Recall, F-measure, Coverage rate, Popularity and Response time. Results were compared against classical recommendation approaches as a baseline. The results show that the accuracy and time performance of SocialMix, when compared with other algorithms which do not consider social relationships, are demonstratively improved. In addition, a positive by product worth noting is that SocialMix has a tendency to recommend more obscure but still interesting locations. A hybrid location suggestion algorithm on familiarity and preference similarity.User similarity calculating approach based on preference similarity and familiarity.Applying three feature variables to calculate users familiarity degree.Using maximum likelihood estimation to compute the weight of each feature variable. Display Omitted

References

[1]
G. Adomavicius, A. Tuzhilin, Toward the next generation of recommender systems: A survey of the state-of-the-art and possible extensions, IEEE Trans. Knowl. Data Eng., 17 (2005) 734-749.
[2]
M.H. Aghdam, M. Analoui, P. Kabiri, Modelling trust networks using resistive circuits for trust-aware recommender systems, Journal of Information Science, 43 (2016) 135-144.
[3]
M.M. Azadjalal, P. Moradi, A. Abdollahpouri, M. Jalili, A trust-aware recommendation method based on pareto dominance and confidence concepts, Knowledge-Based Systems, 116 (2017) 130-143.
[4]
S. Cavallari, V.W. Zheng, H. Cai, K.C.-C. Chang, E. Cambria, Learning community embedding with community detection and node embedding on graphs, in:, ACM, 2017, pp. 1073-1078.
[5]
P. Chavan, Analytical study on collaborative filtering techniques for location-based recommendation, Int. J. Sci. Eng. Res., 6 (2015) 1750-1758.
[6]
M. Chen, F. Li, G. Yu, D. Yang, Extreme learning machine based point-of-interest recommendation in location-based social networks, in:, Springer, 2016, pp. 249-261.
[7]
C. Cheng, H. Yang, I. King, M.R. Lyu, A unified point-of-interest recommendation framework in location-based social networks, ACM Trans. Intell. Syst. Technol., 8 (2016).
[8]
H. Cole-Lewis, T. Kershaw, Text messaging as a tool for behavior change in disease prevention and management, Epidemiol. Rev., 32 (2010) 56-69.
[9]
H. Gao, J. Tang, H. Liu, Addressing the cold-start problem in location recommendation using geo-social correlations, Data Min. Knowl. Discov., 29 (2015) 299-323.
[10]
A. Gogna, A. Majumdar, Balancing accuracy and diversity in recommendations using matrix completion framework, Knowledge-Based Systems, 125 (2017) 83-95.
[11]
T. Horozov, N. Narasimhan, V. Vasudevan, Using location for personalized poi recommendations in mobile environments, in:, IEEE, 2006, pp. 124-129.
[12]
H.-P. Hsieh, Y. Lin, Shou-De anheng, Inferring air quality for station location recommendation based on urban big data, in:, ACM, 2015, pp. 437-446.
[13]
B. Hu, M. Jamali, M. Ester, Spatio-temporal topic modeling in mobile social media for location recommendation, in:, IEEE, 2013, pp. 1073-1078.
[14]
D. Lemire, A. Maclachlan, Slope one predictors for online rating-based collaborative filtering, Vol. 5, SIAM, 2005, pp. 1-5.
[15]
K.W.-T. Leung, D.L. Lee, W.-C. Lee, CLR: A collaborative location recommendation framework based on co-clustering, in:, ACM, 2011, pp. 305-314.
[16]
D. Lian, Y. Ge, F. Zhang, N.J. Yuan, X. Xie, T. Zhou, Y. Rui, Content-aware collaborative filtering for location recommendation based on human mobility data, in:, IEEE, 2015, pp. 261-270.
[17]
A. Maratea, A. Petrosino, M. Manzo, Adjusted F-measure and kernel scaling for imbalanced data learning, Information Sciences, 257 (2014) 331-341.
[18]
P. Moradi, S. Ahmadian, F. Akhlaghian, An effective trust-based recommendation method using a novel graph clustering algorithm, Physica A: Statistical mechanics and its applications, 436 (2015) 462-481.
[19]
S. Qiao, N. Han, K. Zhang, L. Zou, H. Wang, L.A. Gutierrez, Algorithm for detecting overlapping communities from complex network big data, J. Softw., 28 (2017) 631-647.
[20]
S. Scellato, C. Mascolo, Measuring user activity on an online location-based social network, in:, IEEE, 2011, pp. 918-923.
[21]
Y. Si, F. Zhang, W. Liu, CTF-ARA: An adaptive method for POI recommendation based on check-in and temporal features, Knowl.-Based Syst., 128 (2017) 59-70.
[22]
S. Wang, Y. Wang, J. Tang, K. Shu, S. Ranganath, H. Liu, What your images reveal: Exploiting visual contents for point-of-interest recommendation, in:, International World Wide Web Conferences Steering Committee, Republic and Canton of Geneva, Switzerland, 2017, pp. 391-400.
[23]
X. Wang, P. Cui, J. Wang, J. Pei, W. Zhu, S. Yang, Community preserving network embedding, in:, AAAI Press, 2017, pp. 203-209.
[24]
L. Xiang, Q. Yuan, S. Zhao, L. Chen, X. Zhang, Q. Yang, J. Sun, Temporal recommendation on graphs via long-and short-term preference fusion, in:, ACM, 2010, pp. 723-732.
[25]
M. Ye, C. Janowicz, C. Mlligann, W.C. Lee, What you are is when you are: the temporal dimension of feature types in location-based social networks, in:, ACM, 2011, pp. 102-111.
[26]
H. Yin, B. Cui, L. Chen, Z. Hu, C. Zhang, Modeling location-based user rating profiles for personalized recommendation, ACM Trans. Knowl. Discov. Data, 9 (2015) 19.
[27]
H. Yin, B. Cui, Z. Huang, W. Wang, X. Wu, X. Zhou, Joint modeling of users interests and mobility patterns for point-of-interest recommendation, in:, ACM, 2015, pp. 819-822.
[28]
J.-C. Ying, H.-C. Lu, W.-N. Kuo, V.S. Tseng, Urban point-of-interest recommendation by mining user check-in behaviors, in:, ACM, 2012, pp. 63-70.
[29]
Y. Yu, X. Chen, A survey of point-of-interest recommendation in location-based social networks, in:, AAAI Press, 2015, pp. 53-60.
[30]
Z. Yu, H. Xu, Z. Yang, B. Guo, Personalized travel package with multi-point-of-interest recommendation based on crowdsourced user footprints, IEEE Trans. HumanMach. Syst., 46 (2016) 151-158.
[31]
J.D. Zhang, C.Y. Chow, CoRe: Exploiting the personalized influence of two-dimensional geographic coordinates for location recommendations, J. Inf. Sci., 293 (2015) 163-181.
[32]
J. Zhang, C. Chow, Y. Li, iGeoRec: A personalized and efficient geographical location recommendation framework, IEEE T. Serv. Comput., 8 (2015) 701-714.
[33]
J.-D. Zhang, C.-Y. Chow, Y. Li, LORE: Exploiting sequential influence for location recommendations, in:, ACM, 2014, pp. 103-112.
[34]
W. Zhang, J. Wang, Location and time aware social collaborative retrieval for new successive point-of-interest recommendation, in:, ACM, 2015, pp. 1221-1230.
[35]
S. Zhao, T. Zhao, H. Yang, M.R. Lyu, I. King, STELLAR: Spatial-temporal latent ranking for successive point-of-interest recommendation, in:, AAAI Press, 2016, pp. 315-321.
[36]
V.W. Zheng, Y. Zheng, X. Xie, Q. Yang, Collaborative location and activity recommendations with GPS history data, in:, ACM, 2010, pp. 10291038.
[37]
Y. Zheng, F. Liu, H.P. Hsieh, U-Air: when urban air quality inference meets big data, in:, ACM, 2013, pp. 1436-1444.
[38]
Y. Zheng, L. Zhang, Z. Ma, X. Xie, W.Y. Ma, Recommending friends and locations based on individual location history, ACM Trans. Web, 5 (2011) 99-111.

Cited By

View all
  • (2023)Mining multiple sequential patterns through multi-graph representation for next point-of-interest recommendationWorld Wide Web10.1007/s11280-022-01094-326:4(1345-1370)Online publication date: 1-Jul-2023
  • (2022)A Systematic Analysis on the Impact of Contextual Information on Point-of-Interest RecommendationACM Transactions on Information Systems10.1145/350847840:4(1-35)Online publication date: 9-Mar-2022
  • (2022)Algorithms for Trajectory Points Clustering in Location-based Social NetworksACM Transactions on Intelligent Systems and Technology10.1145/348097213:3(1-29)Online publication date: 3-Mar-2022
  • Show More Cited By

Recommendations

Comments

Information & Contributors

Information

Published In

cover image Engineering Applications of Artificial Intelligence
Engineering Applications of Artificial Intelligence  Volume 68, Issue C
February 2018
258 pages

Publisher

Pergamon Press, Inc.

United States

Publication History

Published: 01 February 2018

Author Tags

  1. Familiarity
  2. Interest similarity
  3. Location suggestion
  4. Logistic regression
  5. Online social networks

Qualifiers

  • Research-article

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • Downloads (Last 12 months)0
  • Downloads (Last 6 weeks)0
Reflects downloads up to 12 Jan 2025

Other Metrics

Citations

Cited By

View all
  • (2023)Mining multiple sequential patterns through multi-graph representation for next point-of-interest recommendationWorld Wide Web10.1007/s11280-022-01094-326:4(1345-1370)Online publication date: 1-Jul-2023
  • (2022)A Systematic Analysis on the Impact of Contextual Information on Point-of-Interest RecommendationACM Transactions on Information Systems10.1145/350847840:4(1-35)Online publication date: 9-Mar-2022
  • (2022)Algorithms for Trajectory Points Clustering in Location-based Social NetworksACM Transactions on Intelligent Systems and Technology10.1145/348097213:3(1-29)Online publication date: 3-Mar-2022
  • (2021)A Dynamic Convolutional Neural Network Based Shared-Bike Demand Forecasting ModelACM Transactions on Intelligent Systems and Technology10.1145/344798812:6(1-24)Online publication date: 31-Dec-2021
  • (2019)Incremental Bilateral Preference Stable Planning over Event Based Social NetworksComplexity10.1155/2019/15320132019Online publication date: 16-Apr-2019
  • (2019)Spatiotemporal Representation Learning for Translation-Based POI RecommendationACM Transactions on Information Systems10.1145/329549937:2(1-24)Online publication date: 27-Jan-2019

View Options

View options

Media

Figures

Other

Tables

Share

Share

Share this Publication link

Share on social media