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QoS Prediction for Neighbor Selection via Deep Transfer Collaborative Filtering in Video Streaming P2P Networks

机译:通过深度传输协作滤波在视频流中的邻居选择QoS预测P2P网络

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摘要

To expand the server capacity and reduce the bandwidth, P2P technologies are widely used in video streaming systems in recent years. Each client in the P2P streaming network should select a group of neighbors by evaluating the QoS of the other nodes. Unfortunately, the size of video streaming P2P network is usually very large, and evaluating the QoS of all the other nodes is resource-consuming. An attractive way is that we can predict the QoS of a node by taking advantage of the past usage experiences of a small number of the other clients who have evaluated this node. Therefore, collaborative filtering (CF) methods could be used for QoS evaluation to select neighbors. However, we might use different QoS properties for different video streaming policies. If a new video steaming policy needs to evaluate a new QoS property, but the historical experiences include very few evaluation data for this QoS property, CF methods would incur severe overfitting issues, and the clients then might get unsatisfied recommendation results. In this paper, we proposed a novel neural collaborative filtering method based on transfer learning, which can evaluate the QoS with few historical data by evaluating the other different QoS properties with rich historical data. We conduct our experiments on a large real-world dataset, the QoS values of which are obtained from 339 clients evaluating on the other 5825 clients. The comprehensive experimental studies show that our approach offers higher prediction accuracy than the traditional collaborative filtering approaches.
机译:为了扩展服务器容量并减少带宽,近年来,P2P技术广泛用于视频流系统。 P2P流网络中的每个客户端应通过评估其他节点的QoS来选择一组邻居。不幸的是,视频流的大小通常非常大,并且评估所有其他节点的QoS是资源消耗。一种有吸引力的方式是,我们可以通过利用已经评估了此节点的少数其他客户端的过去的使用体验来预测节点的QoS。因此,协作滤波(CF)方法可用于QoS评估以选择邻居。但是,我们可能会对不同的视频流策略使用不同的QoS属性。如果新的视频蒸发政策需要评估新的QoS属性,但历史经验包括对此QoS财产的评估数据很少,CF方法将产生严重的过度拟合问题,而客户则可能会获得不满意的推荐结果。在本文中,我们提出了一种基于转移学习的新型神经协作滤波方法,其可以通过评估具有丰富历史数据的其他不同QoS属性来评估QoS少数历史数据。我们在大型实际数据集中进行我们的实验,其QoS值是从其他5825个客户端评估的339个客户获得的QoS值。全面的实验研究表明,我们的方法提供比传统的协作过滤方法更高的预测精度。

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  • 来源
    《International journal of digital multimedia broadcasting》 |2019年第1期|1326831.1-1326831.10|共10页
  • 作者单位

    Yantai Univ Sch Comp & Control Engn Yantai 264005 Peoples R China;

    Yantai Univ Sch Comp & Control Engn Yantai 264005 Peoples R China;

    Yantai Univ Sch Comp & Control Engn Yantai 264005 Peoples R China;

    China Natl Nucl Corp Beijing 100045 Peoples R China;

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  • 正文语种 eng
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  • 入库时间 2022-08-18 22:02:11

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