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A Label Propagation Based User Locations Prediction Algorithm in Social Network

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AbstractNetwork community detection is an important service provided by social networks, and social network user location can greatly improve the quality of community detection. Label propagation is one of the main methods to realize the user location prediction. The traditional label propagation algorithm has the problems including “location label countercurrent” and the update randomness of node location label, which seriously affects the accuracy of user location prediction. In this paper, a new location prediction algorithm for social networks based on improved label propagation algorithm is proposed. By computing the K-hop public neighbor of any two point in the social network graph, the nodes with the maximal similarity and their K-hopping neighbors are merged to constitute the initial label propagation set. The degree of nodes not in the initial set are calculated. The node location labels are updated asynchronously is adopted during the iterative process, and the node with the largest degree is selected to update the location label. The improvement proposed solves the “location label countercurrent” and reduces location label updating randomness. The experimental results show that the proposed algorithm improves the accuracy of position prediction and reduces the time cost compared with the traditional algorithms.
Title: A Label Propagation Based User Locations Prediction Algorithm in Social Network
Description:
AbstractNetwork community detection is an important service provided by social networks, and social network user location can greatly improve the quality of community detection.
Label propagation is one of the main methods to realize the user location prediction.
The traditional label propagation algorithm has the problems including “location label countercurrent” and the update randomness of node location label, which seriously affects the accuracy of user location prediction.
In this paper, a new location prediction algorithm for social networks based on improved label propagation algorithm is proposed.
By computing the K-hop public neighbor of any two point in the social network graph, the nodes with the maximal similarity and their K-hopping neighbors are merged to constitute the initial label propagation set.
The degree of nodes not in the initial set are calculated.
The node location labels are updated asynchronously is adopted during the iterative process, and the node with the largest degree is selected to update the location label.
The improvement proposed solves the “location label countercurrent” and reduces location label updating randomness.
The experimental results show that the proposed algorithm improves the accuracy of position prediction and reduces the time cost compared with the traditional algorithms.

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