Measuring the influence and amplification of users on social network with unsupervised behaviors learning and efficient interaction-based knowledge graph

Author(s):  
Quan M. Tran ◽  
Hien D. Nguyen ◽  
Tai Huynh ◽  
Kha V. Nguyen ◽  
Suong N. Hoang ◽  
...  
Author(s):  
Ya-Wen Teng ◽  
Yishuo Shi ◽  
Jui-Yi Tsai ◽  
Hong-Han Shuai ◽  
Chih-Hua Tai ◽  
...  

2020 ◽  
Author(s):  
Jing Yang ◽  
Jing Wan ◽  
Yunxiang Wang ◽  
Yan Mao

PLoS ONE ◽  
2021 ◽  
Vol 16 (3) ◽  
pp. e0248552
Author(s):  
YueQun Wang ◽  
LiYan Dong ◽  
XiaoQuan Jiang ◽  
XinTao Ma ◽  
YongLi Li ◽  
...  

Since the word2vec model was proposed, many researchers have vectorized the data in the research field based on it. In the field of social network, the Node2Vec model improved on the basis of word2vec can vectorize nodes and edges in social networks, so as to carry out relevant research on social networks, such as link prediction, and community division. However, social network is a network with homogeneous structure. When dealing with heterogeneous networks such as knowledge graph, Node2Vec will lead to inaccurate prediction and unreasonable vector quantization data. Specifically, in the Node2Vec model, the walk strategy for homogeneous networks is not suitable for heterogeneous networks, because the latter has distinguishing features for nodes and edges. In this paper, a Heterogeneous Network vector representation method is proposed based on random walks and Node2Vec, called KG2vec (Heterogeneous Network to Vector) that solves problems related to the inadequate consideration of the full-text semantics and the contextual relations that are encountered by the traditional vector representation of the knowledge graph. First, the knowledge graph is reconstructed and a new random walk strategy is applied. Then, two training models and optimizing strategies are proposed, so that the contextual environment between entities and relations is obtained, semantically providing a full vector representation of the Heterogeneous Network. The experimental results show that the KG2VEC model solves the problem of insufficient context consideration and unsatisfactory results of one-to-many relationship in the vectorization process of the traditional knowledge graph. Our experiments show that KG2vec achieves better performance with higher accuracy than traditional methods.


Author(s):  
Bonaventure C. Molokwu ◽  
Ziad Kobti

Social Network Analysis (SNA) has become a very interesting research topic with regard to Artificial Intelligence (AI) because a wide range of activities, comprising animate and inanimate entities, can be examined by means of social graphs. Consequently, classification and prediction tasks in SNA remain open problems with respect to AI. Latent representations about social graphs can be effectively exploited for training AI models in a bid to detect clusters via classification of actors as well as predict ties with regard to a given social network. The inherent representations of a social graph are relevant to understanding the nature and dynamics of a given social network. Thus, our research work proposes a unique hybrid model: Representation Learning via Knowledge-Graph Embeddings and ConvNet (RLVECN). RLVECN is designed for studying and extracting meaningful representations from social graphs to aid in node classification, community detection, and link prediction problems. RLVECN utilizes an edge sampling approach for exploiting features of the social graph via learning the context of each actor with respect to its neighboring actors.


2019 ◽  
Vol 16 (4) ◽  
pp. 679-692 ◽  
Author(s):  
Jianwei Qian ◽  
Xiang-Yang Li ◽  
Chunhong Zhang ◽  
Linlin Chen ◽  
Taeho Jung ◽  
...  

2013 ◽  
Vol 44 (2) ◽  
pp. 22
Author(s):  
ALAN ROCKOFF
Keyword(s):  

2015 ◽  
Vol 21 ◽  
pp. 301
Author(s):  
Armand Krikorian ◽  
Lily Peng ◽  
Zubair Ilyas ◽  
Joumana Chaiban

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