Abstract

Link prediction aims to predict the existence of unknown links via the network information. However, most similarity-based algorithms only utilize the current common neighbor information and cannot get high enough prediction accuracy in evolving networks. So this paper firstly defines the future common neighbors that can turn into the common neighbors in the future. To analyse whether the future common neighbors contribute to the current link prediction, we propose the similarity-based future common neighbors (SFCN) model for link prediction, which accurately locate all the future common neighbors besides the current common neighbors in networks and effectively measure their contributions. We also design and observe three MATLAB simulation experiments. The first experiment, which adjusts two parameter weights in the SFCN model, reveals that the future common neighbors make more contributions than the current common neighbors in complex networks. And two more experiments, which compares the SFCN model with eight algorithms in five networks, demonstrate that the SFCN model has higher accuracy and better performance robustness.

Highlights

  • Many social, biological, and food-chain systems can be well described by networks, where nodes denote individuals, biological elements, and so on, and links represent the relations between nodes

  • The experiments, where we change the ratio of the training set to the probe set in five networks, demonstrates that the similarity-based future common neighbors (SFCN) model has better performance robustness

  • We firstly discover the existence of the future common neighbors, which are classified into three types according to their topological structure with other nodes

Read more

Summary

Introduction

Biological, and food-chain systems can be well described by networks, where nodes denote individuals, biological elements, and so on, and links represent the relations between nodes. We propose the similarity-based future common neighbors (SFCN) model for link prediction. The proposed SFCN model has higher accuracy and performance robustness than popular algorithms, and the future common neighbors is necessary to be considered for link prediction in evolving networks.

Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call