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Journal ArticleDOI

QoS Prediction for Service Recommendation with Deep Feature Learning in Edge Computing Environment

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TLDR
A new matrix factorization (MF) model with deep features learning, which integrates a convolutional neural network (CNN), named Joint CNN-MF (JCM), which is capable of using the learned deep latent features of neighbors to infer the features of a user or a service.
Abstract
Along with the popularity of intelligent services and mobile services, service recommendation has become a key task, especially the task based on quality-of-service (QoS) in edge computing environment. Most existing service recommendation methods have some serious defects, and cannot be directly adopted in edge computing environment. For example, most of existing methods cannot learn deep features of users or services, but in edge computing environment, there are a variety of devices with different configurations and different functions, and it is necessary to learn deep features behind those complex devices. In order to fully utilize hidden features, this paper proposes a new matrix factorization (MF) model with deep features learning, which integrates a convolutional neural network (CNN). The proposed mode is named Joint CNN-MF (JCM). JCM is capable of using the learned deep latent features of neighbors to infer the features of a user or a service. Meanwhile, to improve the accuracy of neighbors selection, the proposed model contains a novel similarity computation method. CNN learns the neighbors features, forms a feature matrix and infers the features of the target user or target service. We conducted experiments on a real-world service dataset under a batch of cases of data densities, to reflect the complex invocation cases in edge computing environment. The experimental results verify that compared to counterpart methods, our method can consistently achieve higher QoS prediction results.

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Citations
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Deep Learning Models for Real-time Human Activity Recognition with Smartphones

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Cognitive computing and wireless communications on the edge for healthcare service robots

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Mining consuming Behaviors with Temporal Evolution for Personalized Recommendation in Mobile Marketing Apps

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Journal ArticleDOI

The Cloud-edge-based Dynamic Reconfiguration to Service Workflow for Mobile Ecommerce Environments: A QoS Prediction Perspective

TL;DR: In this article, a cloud-edge based dynamic reconfiguration to service workflow for mobile e-commerce environments is proposed, where the value and cost attributes of a service are considered, and a long short-term memory (LSTM) neural network is used to predict the stability of services.
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Transformation-based processing of typed resources for multimedia sources in the IoT environment

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References
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Journal ArticleDOI

Matrix Factorization Techniques for Recommender Systems

TL;DR: As the Netflix Prize competition has demonstrated, matrix factorization models are superior to classic nearest neighbor techniques for producing product recommendations, allowing the incorporation of additional information such as implicit feedback, temporal effects, and confidence levels.
Proceedings ArticleDOI

Item-based collaborative filtering recommendation algorithms

TL;DR: This paper analyzes item-based collaborative ltering techniques and suggests that item- based algorithms provide dramatically better performance than user-based algorithms, while at the same time providing better quality than the best available userbased algorithms.
Proceedings ArticleDOI

GroupLens: an open architecture for collaborative filtering of netnews

TL;DR: GroupLens is a system for collaborative filtering of netnews, to help people find articles they will like in the huge stream of available articles, and protect their privacy by entering ratings under pseudonyms, without reducing the effectiveness of the score prediction.
Posted Content

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Journal ArticleDOI

QoS-Aware Web Service Recommendation by Collaborative Filtering

TL;DR: This paper proposes a collaborative filtering approach for predicting QoS values of Web services and making Web service recommendation by taking advantages of past usage experiences of service users, and shows that the algorithm achieves better prediction accuracy than other approaches.
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