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A Deep Learning Approach for Long Term QoS-Compliant Service Composition

机译:长期符合QoS的服务组合的深度学习方法

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In this paper, we propose a deep learning approach for long-term Quality of Service (QoS)-based service composition. Existing techniques for quality-aware service composition mostly focus on static QoS values observed during composition time. They do not consider potential QoS fluctuations in the long run when selecting services for composition or substitution. Our approach uses deep recurrent Long Short Term Memories (LSTMs) to forecast future QoS. The predicted QoS values are used to accurately recommend components and substitutes in long-term service compositions. Experiments show promising results compared to existing QoS prediction techniques.
机译:在本文中,我们针对基于服务质量(QoS)的长期服务组合提出了一种深度学习方法。用于质量感知服务组合的现有技术主要集中于在组合期间观察到的静态QoS值。从长远来看,他们在选择服务进行组合或替换时不会考虑潜在的QoS波动。我们的方法使用深度递归的长期短期记忆(LSTM)来预测未来的QoS。预测的QoS值用于在长期服务组合中准确推荐组件和替代组件。与现有的QoS预测技术相比,实验显示出令人鼓舞的结果。

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