Web Service Quality Prediction Method Based on Recurrent Neural Network

X. Ye, Yanmei Wang, Zhichun Jia
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引用次数: 1

Abstract

For web services, QoS (Quality of Service, quality of service) is an important indicator for judging whether a web service is efficient. How to better predict the QoS value of the service to make appropriate service recommendations is the entire recommendation system and Issues that are being discussed in the service forecasting academia. At the same time, the timeliness and time relevance of QoS values are also affecting the prediction accuracy of Web services. A large amount of QoS data has potentially time-related attributes. This provides a new inspiration and thinking for service forecasting. Add the time characteristics of the data to the learning of the predictive model. Inspired by these factors, this paper proposes a deep neural network combination model that is sensitive to the time characteristics of QoS. At the same time, based on the final experimental results, the model proposed in this paper has obvious effects on the prediction of QoS values with time attributes.
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基于递归神经网络的Web服务质量预测方法
对于web服务来说,QoS (Quality of Service,服务质量)是判断web服务是否高效的重要指标。如何更好地预测服务的QoS值,做出合适的服务推荐,是整个推荐系统和服务预测学术界正在讨论的问题。同时,QoS值的时效性和时间相关性也影响着Web服务的预测精度。大量的QoS数据具有潜在的时间相关属性。这为服务预测提供了新的启示和思路。将数据的时间特征加入到预测模型的学习中。受这些因素的启发,本文提出了一种对QoS时间特性敏感的深度神经网络组合模型。同时,根据最终的实验结果,本文提出的模型对具有时间属性的QoS值的预测效果明显。
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