Temporal Pattern-Aware QoS Prediction via Biased Non-Negative Latent Factorization of Tensors 论文

2019IEEE Transactions on Cybernetics引用 310
Recommender Systems and TechniquesCaching and Content DeliveryTensor decomposition and applications

详细信息

发表期刊/会议
IEEE Transactions on Cybernetics
发表日期
2019-04-04
发表年份
2019

关键词

Recommender Systems and TechniquesCaching and Content DeliveryTensor decomposition and applications

摘要

Quality-of-service (QoS) data vary over time, making it vital to capture the temporal patterns hidden in such dynamic data for predicting missing ones with high accuracy. However, currently latent factor (LF) analysis-based QoS-predictors are mostly defined on static QoS data without the consideration of such temporal dynamics. To address this issue, this paper presents a biased non-negative latent factorization of tensors (BNLFTs) model for temporal pattern-aware QoS prediction. Its main idea is fourfold: 1) incorporating linear biases into the model for describing QoS fluctuations; 2) constraining the model to be non-negative for describing QoS non-negativity; 3) deducing a single LF-dependent, non-negative, and multiplicative update scheme for training the model; and 4) incorporating an alternating direction method into the model for faster convergence. The empirical studies on two dynamic QoS datasets from real applications show that compared with the state-of-the-art QoS-predictors, BNLFT represents temporal patterns more precisely with high computational efficiency, thereby achieving the most accurate predictions for missing QoS data.

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