Title of article :
Link prediction in brain networks based on a hierarchical random graph model
Author/Authors :
yang, Yanli taiyuan university of technology - school of computer science and technology, China , guo, Hao taiyuan university of technology - school of computer science and technology, China , tian, Tian taiyuan university of technology - school of computer science and technology, China , li, Haifang taiyuan university of technology - school of computer science and technology, China
From page :
306
To page :
315
Abstract :
Link prediction attempts to estimate the likelihood of the existence of links between nodes based on available brain network information,such as node attributes and observed links. In response to the problem of the poor efficiency of general link prediction methods applied to brain networks,this paper proposes a hierarchical random graph model based on maximum likelihood estimation. This algorithm uses brain network data to create a hierarchical random graph model. Then,it samples the space of all possible dendrograms using a Markov-chain Monte Carlo algorithm. Finally,it calculates the average connection probability. It also employs an evaluation index. Comparing link prediction in a brain network with link prediction in three different networks (Treponemapallidum metabolic network,terrorist networks,and grassland species food webs) using the hierarchical random graph model,experimental results show that the algorithm applied to the brain network has the highest prediction accuracy in terms of AUC scores. With the increase of network scale,AUC scores of the brain network reach 0.8 before gradually leveling off. In addition,the results show AUC scores of various algorithms computed in networks of eight different scales in 28 normal people. They show that the HRG algorithm is far better than random prediction and the ACT global index,and slightly inferior to local indexes CN and LP. Although the HRG algorithm does not produce the best results,its forecast effect is obvious,and shows good time complexity.
Keywords :
brain network , hierarchical random graph , link prediction , maximum likelihood estimation method
Journal title :
Tsinghua Science and Technology
Journal title :
Tsinghua Science and Technology
Record number :
2535668
Link To Document :
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