Ensemble deep neural network based quality of service prediction for cloud service recommendation
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Date
2021
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Journal Title
Journal ISSN
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Publisher
Elsevier B.V.
Abstract
Applications of Cloud Services are increasing day by day, and so is the difficulty of choosing the best-suited service for a customer. Quality of Service (QoS) parameters can be used for quality assurance and evaluation; further, a service can be recommended based on these QoS parameters’ values. Recommendation systems are getting much attention lately. It has a crucial role in almost all the major commercial platforms and many improvements are being made to make the recommendations more precise and closer to the user's requirements. Conventional Machine Learning algorithms and statistical analysis methods, presently are not that efficient in learning the complex correlation between data elements. Lately, Deep Learning models have proven to be practical and precise in areas like natural language processing, image processing, data mining, & data interpretation. However, there are not many examples of complete Deep Learning applications for cloud service recommendation systems, though some works partially use Deep Learning. We propose the Ensemble of Deep Neural Networks (EDNN) method, which is of the hybrid type, i.e., the fusion of neighborhood-based and neural network model-based methods. The output obtained from both the models are combined using another different neural network model. Our approach for predicting QoS values is simple and different from previous works, and the results show that it outperforms other classical methods marginally. © 2021 Elsevier B.V.
Description
Keywords
Data handling, Data mining, Distributed database systems, Learning algorithms, Multilayer neural networks, Natural language processing systems, Network layers, Quality assurance, Quality control, Quality of service, Recommender systems, Sol-gel process, Cloud service recommendation, Cloud services, Deep learning, Ensemble deep neural network, Multilayers perceptrons, Neural network model, Quality of Service parameters, Quality-of-service, Service recommendations, Deep neural networks, article, attention, cloud computing, data mining, deep learning, deep neural network, image processing, multilayer perceptron, natural language processing, neighborhood, prediction, quality control
Citation
Neurocomputing, 2021, 465, , pp. 476-489
