Redirigiendo al acceso original de articulo en 16 segundos...
Inicio  /  Information  /  Vol: 10 Par: 10 (2019)  /  Artículo
ARTÍCULO
TITULO

Identifying Influential Nodes in Complex Networks Based on Local Effective Distance

Junkai Zhang    
Bin Wang    
Jinfang Sheng    
Jinying Dai    
Jie Hu and Long Chen    

Resumen

With the rapid development of Internet technology, the social network has gradually become an indispensable platform for users to release information, obtain information, and share information. Users are not only receivers of information, but also publishers and disseminators of information. How to select a certain number of users to use their influence to achieve the maximum dissemination of information has become a hot topic at home and abroad. Rapid and accurate identification of influential nodes in the network is of great practical significance, such as the rapid dissemination, suppression of social network information, and the smooth operation of the network. Therefore, from the perspective of improving computational accuracy and efficiency, we propose an influential node identification method based on effective distance, named KDEC. By quantifying the effective distance between nodes and combining the position of the node in the network and its local structure, the influence of the node in the network is obtained, which is used as an indicator to evaluate the influence of the node. Through experimental analysis of a lot of real-world networks, the results show that the method can quickly and accurately identify the influential nodes in the network, and is better than some classical algorithms and some recently proposed algorithms.

 Artículos similares

       
 
Abrar A. Almuhanna, Wael M. S. Yafooz and Abdullah Alsaeedi    
In this era of digital transformation, when the amount of scholarly literature is rapidly growing, hundreds of papers are published online daily with regard to different fields, especially in relation to academic subjects. Therefore, it difficult to find... ver más
Revista: Applied Sciences

 
Razan Alkhazaleh, Konstantinos Mykoniatis and Ali Alahmer    
Modern innovative models have the possibility of transferring research and development (R&D) output through technology transfer from scientific and research institutions or other enterprises. The complex process of technology transfer is significantl... ver más

 
Xu Li and Qiming Sun    
Identifying and ranking the node influence in complex networks is an important issue. It helps to understand the dynamics of spreading process for designing efficient strategies to hinder or accelerate information spreading. The idea of decomposing netwo... ver más
Revista: Algorithms

 
Constantine Michailides    
For the analysis and design of coastal and offshore structures, viscous loads represent one of the most influential parameters that dominate their response. Very commonly, the potential flow theory is used for identifying the excitation wave loads, while... ver más

 
Jinfang Sheng, Jiafu Zhu, Yayun Wang, Bin Wang and Zheng?ang Hou    
The real world contains many kinds of complex network. Using influence nodes in complex networks can promote or inhibit the spread of information. Identifying influential nodes has become a hot topic around the world. Most of the existing algorithms used... ver más
Revista: Algorithms