Reducing features to improve link prediction performance in location based social networks, non-monotonically selected subset from feature clusters

Author(s):  
Ahmet Engin Bayrak ◽  
Faruk Polat
2018 ◽  
Vol 45 (5) ◽  
pp. 676-690 ◽  
Author(s):  
Ahmet Engin Bayrak ◽  
Faruk Polat

In this study, we investigated feature-based approaches for improving the link prediction performance for location-based social networks (LBSNs) and analysed their performances. We developed new features based on time, common friend detail and place category information of check-in data in order to make use of information in the data which cannot be utilised by the existing features from the literature. We proposed a feature selection method to determine a feature subset that enhances the prediction performance with the removal of redundant features by clustering them. After clustering features, a genetic algorithm is used to determine the ones to select from each cluster. A non-monotonic and feasible feature selection is ensured by the proposed genetic algorithm. Results depict that both new features and the proposed feature selection method improved link prediction performance for LBSNs.


2020 ◽  
Vol 31 (11) ◽  
pp. 2050160
Author(s):  
Jinsong Li ◽  
Jianhua Peng ◽  
Shuxin Liu ◽  
Kai Wang ◽  
Cong Li

Link prediction has been widely applied in social network analysis. Existing studies on link prediction assume the network to be undirected, while most realistic social networks are directed. In this paper, we design a simple but effective method of link prediction in directed social networks based on common interest and local community. The proposed method quantifies the contributions of neighbors with analysis on the information exchange process among nodes. It captures both the essential motivation of link formation and the effect of local community in social networks. We validate the effectiveness of our method with comparative experiments on nine realistic networks. Empirical studies show that the proposed method is able to achieve better prediction performance under three standard evaluation metrics, with great robustness on the size of training set.


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