Abstract

Currently, more and more people communicate and trade through online social networks, so it is necessary to predict the trust between users. In order to predict the trust between users through a social network requires some other factors, such as user similarity, topic relevance, and the number of common neighbors should be considered. Some scholars use BP neural network based on the asymmetric tri-training model to train one social network and use transfer learning to predict the social relationship of another social network. However, this method has high computational complexity and slow operation speed. To solve the problem, the three classifiers are expanded into four classifiers on the basis of asymmetric tri-training, and the extreme learning machine classifier is used to replace the BP neural network classifier. The specific steps are: we first obtain the common features between different networks, use source data samples to train the first three classifiers, save the model, and train target samples to generate pseudo labels; then we use standard pseudo label samples to train the fourth classifier and use it to predict the social relations of the target network. Finally, compare with the existing evaluation methods, we proposed an algorithm on six online social networks. The experimental results show that the model in this paper is superior to other evaluation methods in recall and stability.

Highlights

  • More and more people trade and make friends through social networks

  • This paper is based on the asymmetric tri-training framework and expands it into four classifiers to build an extended asymmetric ELM tri-training model

  • Through the comparison of experimental results, the proposed method is superior to the existing prediction methods in terms of recall rate

Read more

Summary

Introduction

More and more people trade and make friends through social networks. In such a big environment, the relationship between people is diverse, and each person plays a different role in different fields. Fewer user relationship tags have been existed. The problem now is how to predict the trust relationship between users when there are few social network tags. There are two challenges to predict social relations across domains. There should be common features between two networks in order to use similar transfer learning methods to save the trained parameters and models. The classifier speed should be as fast as possible while ensuring the accuracy

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call