Abstract

Networking is the use of physical links to connect individual isolated workstations or hosts together to form data links for the purpose of resource sharing and communication. In the field of web service application and consumer environment optimization, it has been shown that the introduction of network embedding methods can effectively alleviate the problems such as data sparsity in the recommendation process. However, existing network embedding methods mostly target a specific structure of network and do not collaborate with multiple relational networks from the root. Therefore, this paper proposes a service recommendation model based on the hybrid embedding of multiple networks and designs a multinetwork hybrid embedding recommendation algorithm. First, the user social relationship network and the user service heterogeneous information network are constructed; then, the embedding vectors of users and services in the same vector space are obtained through multinetwork hybrid embedding learning; finally, the representation vectors of users and services are applied to recommend services to target users. To verify the effectiveness of this paper’s method, a comparative analysis is conducted with a variety of representative service recommendation methods on three publicly available datasets, and the experimental results demonstrate that this paper’s multinetwork hybrid embedding method can effectively collaborate with multirelationship networks to improve service recommendation quality, in terms of recommendation efficiency and accuracy.

Highlights

  • At present, the world has entered the era of driven technological innovation

  • The F-measure values can be improved by 21% and 15%, respectively, compared with the service recommendation methods based on a single relational network and a simple fused multirelational network

  • We propose a multirelational network hybrid embedding method for service recommendation, in which a multirelational network mapped user and service representation vector is obtained using the hybrid network embedding method

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Summary

Introduction

The world has entered the era of driven technological innovation. Digital technology and information and communication technology (ICT) have become an important basis for a country’s economic and social development and an important symbol of industrial and trade competitiveness. After the epidemic, a new infrastructure plan to accelerate the layout of a new generation of digital technology infrastructure will be conducive to grasp the strategic opportunities of the new round of information technology revolution It promotes the development of ICT service trade to a new level and plays a Journal of Sensors major role in building a new pattern of the domestic and international dual cycle. The main contributions are summarized as follows: (1) In the field of web service application and consumer environment optimization, the introduction of the network embedding method can effectively alleviate the problems of data sparsity in the recommendation process. In order to improve the efficiency of recommendation, the random wandering method in embedding learning is optimized to ensure that the feature information of the original network can be extracted and retained more effectively. The experimental results demonstrate that this hybrid multinetwork embedding method can effectively collaborate with multirelational networks to improve the quality of service recommendation.

Service Recommendation Method for Multinetwork Hybrid Embedding
Multinetwork Hybrid Embedding Recommendation Algorithm Design
Experimental Results and Data Analysis
Conclusion
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