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Multi-Valued Collaborative Qos Prediction for Cloud Service Via Time Series Analysis

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TLDR
A new vector comparison method combining the orientation similarity and dimension similarity to improve the precision of similarity calculation is presented, which can provide high accuracy of collaborative QoS prediction for multi-valued evaluations in the cloud computing paradigm.
Abstract
Aiming at the diversity of user features, the uncertainty and the variation characteristics of quality of service (QoS), by exploiting the continuous monitoring data of cloud services, this paper proposes a multi-valued collaborative approach to predict the unknown QoS values via time series analysis for potential users. In this approach, the multi-valued QoS evaluations consisting of single-value data and time series data from consumers are transformed into cloud models, and the differences between potential users and other consumers in every period are measured based on these cloud models. Against the deficiency of existing methods of similarity measurement between cloud models, this paper presents a new vector comparison method combining the orientation similarity and dimension similarity to improve the precision of similarity calculation. The fuzzy analytic hierarchy process method is used to help potential users determine the objective weight of every period, and the neighboring users are selected for the potential user according to their comprehensive similarities of QoS evaluations in multiple periods. By incorporating the multi-valued QoS evaluations with the objective weights among multiple periods, the predicted results can remain consistent with the periodic variations of QoS. Finally, the experiments based on a real-world dataset demonstrate that this approach can provide high accuracy of collaborative QoS prediction for multi-valued evaluations in the cloud computing paradigm.

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Citations
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Collaborative QoS prediction with context-sensitive matrix factorization

TL;DR: A general context-sensitive matrix-factorization approach (CSMF) is proposed to make collaborative QoS prediction that significantly outperforms the-state-of-art methods in metric of prediction accuracy and is more effective and robust.
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Fluctuation-Aware and Predictive Workflow Scheduling in Cost-Effective Infrastructure-as-a-Service Clouds

TL;DR: A case study based on real-world third-party IaaS clouds and some well-known scientific workflows shows that the proposed approach outperforms traditional approaches, especially those considering time-invariant or bounded performance only.
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Time-aware trustworthiness ranking prediction for cloud services using interval neutrosophic set and ELECTRE

TL;DR: A time-aware approach to predict the trustworthiness ranking of cloud services, with the tradeoffs between performance-cost and potential risks in multiple periods is proposed, and an improved ELECTRE method is developed to solve the problem.
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QoS-aware cloud service composition: A systematic mapping study from the perspective of computational intelligence

TL;DR: The results indicate that reducing response time is the most important motivation for researchers, and meta-heuristic algorithms are the most widely used computational intelligence techniques, besides, the most commonly used QoS attributes and datasets are also revealed.
References
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Proceedings ArticleDOI

Collaborative reliability prediction of service-oriented systems

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