基于多偏差的张量潜在分解的动态网络链路预测

Xuke Wu, Juan Wang, Hao Wu
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引用次数: 1

摘要

动态网络的拓扑信息随时间而变化,因此捕捉其时间模式对于准确预测缺失链接至关重要。基于张量的潜在因子分解(LFT)模型已被证明是解决这一问题的有效方法,其中动态网络被表示为三维高维稀疏张量(HiDS)。然而,目前基于lft的模型在分析HiDS张量以完成动态链路预测时没有考虑多偏差。为了解决这一问题,本文提出了一种多偏差融合的张量潜在因子分解(MBLFT)模型,该模型将短期偏差、预处理偏差和长期偏差集成到一个LFT模型中。对两个大型动态网络的实际应用的实证研究表明,与最先进的预测器相比,MBLFT模型对动态网络中缺失环节的预测精度和计算效率更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Biases-incorporated Latent Factorization of Tensors for Dynamic Network Link Prediction
The topological information of a dynamic network varies over time, making it crucial to capture its temporal patterns for predicting missing links accurately. A latent factorization of tensors (LFT)-based model has proven to be efficient to solve this problem, where a dynamic network is represented as a three-way high-dimensional and sparse (HiDS) tensor. However, currently LFT-based models do not consider multiple biases in analyzing an HiDS tensor for accomplishing dynamic link prediction. To address this issue, this paper proposes a multiple biases-incorporated latent factorization of tensors (MBLFT) model, which integrates short-term bias, preprocessing bias and long-term bias into an LFT model. Empirical studies on two large-scale dynamic networks from real applications show that compared with state-of-the-art predictors, an MBLFT model achieves higher prediction accuracy and computational efficiency for missing links in dynamic network.
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