Abstract

For several reasons, the cloud computing paradigm, e.g., mobile edge computing (MEC), is suffering from the problem of privacy issues. MEC servers provide personalization services to mobile users for better QoE qualities, but the ongoing migrated data from the source edge server to the destination edge server cause users to have privacy concerns and unwillingness of self-disclosure, which further leads to a sparsity problem. As a result, personalization services ignore valuable user profiles across edges where users have accounts in and tend to predict users’ potential purchases with insufficient sources, thereby limiting further improvement of QoE through personalization of the contents. This paper proposes a novel model, called CEPTM, which (1) collects mobile user data across multiple MEC edge servers, (2) improves the users’ experience in personalization services by loading collected diverse data, and (3) lowers their privacy concern with the improved personalization. This model also reveals that famous topics in one edge server can migrate into several other edge servers with users’ favorite content tags and that the diverse types of items could increase the possibility of users accepting the personalization service. In the experiment section, we use exploratory factor analysis to mathematically evaluate the correlations among those factors that influence users’ information disclosure in the MEC network, and the results indicate that CEPTM (1) achieves a high rate of personalization acceptance due to the availability of more data as input and highly diverse personalization as output and (2) gains the users’ trust because it collects user data while respecting individual privacy concerns and providing better personalization. It outperforms a traditional personalization service that runs on a single-edge server. This paper provides new insights into MEC diverse personalization services and privacy problems, and researchers and personalization providers can apply this model to merge popular users’ like trends throughout the MEC edge servers and generate better data management strategies.

Highlights

  • With the proliferation of the Internet of things and the burgeoning of the cloud computing paradigm network, mobile edge computing (MEC) has been widely adopted at a tremendous speed

  • All qualified users were asked about their personal traits, including item expertise: how much they are familiar with the item category, trust propensity: how much they trust the baseline personalization service (BLPS) or CEPTM, and familiarity with online privacy and personalization: how well they understand the privacy collection

  • We proposed a novel cross-edge model, called CEPTM, for better personalization service, and we reveal how famous topics in one resource edge server can emerge on several other destination edge servers in MEC

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Summary

Introduction

With the proliferation of the Internet of things and the burgeoning of the cloud computing paradigm network, mobile edge computing (MEC) has been widely adopted at a tremendous speed. A large collection of computing resources, such as mobile devices, application servers, and storage units, are utilized to serve users in all types of tenant models. The presentation and wide application of MEC have changed people’s daily work and are utilized in the data centers of computing companies. As the de facto centralized big data platform, the cloud computing paradigm supports QoE with a fruitful number of benefits—convenience, pay for each use, and ubiquity—which has given birth to a worldwide range of industry companies [2]. The widely applied denominator in MEC is the deployment of cloud computing-like capabilities at the edge of the IoT network.

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