Research on Application of Algorithm of Bayesian Network Used in Network Information Mining

Author(s):  
Aiyue Xia
2019 ◽  
Vol 3 (2) ◽  
pp. 26
Author(s):  
Gang Chen ◽  
Chunzhi Zhang

<p>With the popularity of network information technology, the Internet has gradually infiltrated to people's life and even changed their lifestyles. People use Internet thinking to solve all the problems they encounter. Therefore, people's life is inseparable from the Internet. In the field of education, the "Internet" also plays its role. Universities and colleges continue to improve the teaching system and form a student-led teaching method, which is consistent with the Internet development speed. Taking the diversified teaching model as the starting point, we will deeply study the development path of the application-oriented teaching system under the "Internet +".</p>


2021 ◽  
Author(s):  
Yijun Ran ◽  
Tianyu Liu ◽  
Tao Jia ◽  
Xiao-Ke Xu

Abstract Network information mining is the study of the network topology, which may answer a large number of application-based questions towards the structural evolution and the function of a real system. The question can be related to how the real system evolves or how individuals interact with each other in social networks. Although the evolution of the real system may seem to be found regularly, capturing patterns on the whole process of evolution is not trivial. Link prediction is one of the most important technologies in network information mining, which can help us understand the evolution mechanism of real-life network. Link prediction aims to uncover missing links or quantify the likelihood of the emergence of nonexistent links from known network structures. Currently, widely existing methods of link prediction almost focus on short-path networks that usually have a myriad of close triangular structures. However, these algorithms on highly sparse or long-path networks have poor performance. Here, we propose a new index that is associated with the principles of Structural Equivalence and Shortest Path Length (SESPL) to estimate the likelihood of link existence in long-path networks. Through 548 real networks test, we find that SESPL is more effective and efficient than other similarity-based predictors in long-path networks. Meanwhile, we also exploit the performance of SESPL predictor and of embedding-based approaches via machine learning techniques. The results show that the performance of SESPL can achieve a gain of 44.09% over GraphWave and 7.93% over Node2vec. Finally, according to the matrix of Maximal Information Coefficient (MIC) between all the similarity-based predictors, SESPL is a new independent feature in the space of traditional similarity features.


Author(s):  
Hong Wang ◽  
Zheng Du

Cloud computing is the integration and storage of teaching resources in the cloud through modern network information technology, which can provide a convenient and fast platform for the construction and sharing of teaching resources informatization in colleges and universities. This paper first introduces teaching informatization and cloud computing, proposes that the main part of teaching informatization is teaching resources informatization, and the shortage of using information technology combined with it at present, and gives the advantages of cloud computing for teaching resources informatization application of high efficiency and sharing. Through the application of cloud computing, the teaching resources of colleges and universities are more perfect and sufficient, which is beneficial to assist the development of intelligent education and improve the education level, and promote the construction of teaching informatization.


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