location: Current position: Home >> Scientific Research >> Paper Publications

Disappearing Link Prediction in Scientific Collaboration Networks

Hits:

Indexed by:期刊论文

Date of Publication:2018-01-01

Journal:IEEE ACCESS

Included Journals:SCIE、SSCI

Volume:6

Page Number:69702-69712

ISSN No.:2169-3536

Key Words:Disappearing link prediction; scientific collaboration networks; structural similarity

Abstract:It is a common sense that both the formation and dissolution of links are the fundamental processes of link dynamics in network organization. Previous studies have analyzed the formation of links with predicting missing links in current networks and new links in the future. However, little attention has been paid to the disappearing link prediction problem. In this paper, we investigate the disappearing link prediction problem. First, we define the disappearing link prediction in scientific collaboration networks. In contrary to the missing link prediction, we use structural similarity indices to estimate the disappearing links through dissimilarity of the node pairs. Then, we propose a novel method called modified preferential attachment (MPA) for predicting disappearing links. MPA is designed based on the preferential attachment considering both links' weights and the different impacts of the nodes' neighbor links. Finally, we evaluate the performance of MPA based on three real scientific collaboration networks extracted from Digital Bibliography & Library Project and American Physical Society datasets. Meanwhile, we explore the performance of the classical similarity methods on disappearing link prediction. The experiment results show that MPA achieves better performance than other classical similarity indices, which verifies the effectiveness of MPA.

Pre One:Network Traffic Prediction Based on Deep Belief Network and Spatiotemporal Compressive Sensing in Wireless Mesh Backbone Networks

Next One:Robust Sparse Bayesian Learning for off-Grid DOA Estimation With Non-Uniform Noise