Abstract

Cyber-physical systems (CPS) have received much attention from both academia and industry. An increasing number of functions in CPS are provided in the way of services, which gives rise to an urgent task, that is, how to recommend the suitable services in a huge number of available services in CPS. In traditional service recommendation, collaborative filtering (CF) has been studied in academia, and used in industry. However, there exist several defects that limit the application of CF-based methods in CPS. One is that under the case of high data sparsity, CF-based methods are likely to generate inaccurate prediction results. In this paper, we discover that mining the potential similarity relations among users or services in CPS is really helpful to improve the prediction accuracy. Besides, most of traditional CF-based methods are only capable of using the service invocation records, but ignore the context information, such as network location, which is a typical context in CPS. In this paper, we propose a novel service recommendation method for CPS, which utilizes network location as context information and contains three prediction models using random walking. We conduct sufficient experiments on two real-world datasets, and the results demonstrate the effectiveness of our proposed methods and verify that the network location is indeed useful in QoS prediction.

Highlights

  • Cyber-physical systems (CPS) are fitting into modern society

  • We focus on designing an applicable service recommendation method for CPS

  • To fully take advantage of the context information on both the user side and service side, we further propose a hybrid model, which combines the results of the UL-RW model and the SL-RW

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Summary

Introduction

Cyber-physical systems (CPS) are fitting into modern society. In CPS, sensors and mobile devices collect various information from the physical environment, and generate a huge amount of data. Based on the data collected, enterprises can provide services which will improve our life quality. Due to the huge number of services in CPS, it becomes an urgent task to effectively select the suitable candidate services for different users. Besides the difference of functionality, services in CPSs are likely to provide different quality under various environments, especially in the different network conditions, such as 4G, 5G, and Wi-Fi. In this paper, our goal is to select the suitable services with high quality for users in CPS

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