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A method for link prediction for complex networks

A link prediction and complex network technology, applied in the interdisciplinary field of deep learning and network science, can solve problems such as bottlenecks in prediction results

Active Publication Date: 2022-02-15
BEIJING NORMAL UNIVERSITY +1
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

Traditional link prediction methods generally regard each part of the network as homogeneous, and do not distinguish the influence of each part on the target node, which is not in line with the actual situation, so there is a certain bottleneck in its prediction effect

Method used

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  • A method for link prediction for complex networks
  • A method for link prediction for complex networks
  • A method for link prediction for complex networks

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Embodiment Construction

[0034] The present invention is further elaborated in conjunction with the accompanying drawings and specific implementation processes on the CORA network:

[0035] The specific solution of the present invention is a link prediction problem on a large-scale complex network, and the literature cited network CORA data set is described below:

[0036] Modeling the paper in the data is the node on the network. The reference relationship between the paper is modeled as the even the side between the nodes. It does not consider the direction of the side and the category of the node, and finally can contain 2708 nodes, 5429 The universal unidirectional network structure of the strip is very important in the predicting the literature analysis in the network. The present invention deletes the partial side of the network, as a continuous edge to be predicted, and unlealed as a training set.

[0037] The present invention employs a link prediction model based on a graph point-to-end and a bat...

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Abstract

The invention provides a link prediction method for complex networks, an end-to-end link prediction model based on graph attention network (GAT), and a batch training method for the model. The key to this model is to learn the attention distribution of network nodes to their surrounding neighbors. The steps of model training and model prediction include: step 1, input the topology structure of the unweighted and undirected homogeneous network; step 2, perform first-order and second-order neighbor sampling on all nodes according to the topology structure of the training set, so that the network Batch; step 3, input the batched training set into the above model to train model parameters; step 4, input the point pair you want to predict, and the model outputs the probability that there is an edge between the point pair. The model described in the present invention has the characteristics of end-to-end. The batch training method makes the model suitable for large-scale complex networks.

Description

Technical field [0001] The present invention relates to deep learning and network science crossains, and specific relates to an end-to-end complex network link prediction model and a batch training method thereof. This model uses the attention mechanism to combine the network topology, which can characterize the network. The method of batch training allows the network to handle link prediction issues of large-scale networks. [0002] technical background [0003] Large-scale complex networks are generally in the real world, such as the World Wide Web, Aviation Network, Online Network and Protein Networks. It is understood that these complex networks are increasingly urgent needs in humans. The study of complex networks belongs to the cross-areas, namely the theoretical research from mathematics and physical perspectives, and also studies with algorithm in combination with computer technology, is one of the research hotspots in the current scientific field. Under normal circumstanc...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06Q10/04G06Q50/00G16B5/00
CPCG06Q10/04G06Q50/01
Inventor 谷伟伟高飞张江
Owner BEIJING NORMAL UNIVERSITY
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