A Diverse Biases Non-negative Latent Factorization of Tensors Model for Dynamic Network Link Prediction

Xuke Wu, Hang Gou, Hao Wu, Juan Wang, Minzhi Chen, S. Lai
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引用次数: 1

Abstract

Dynamic networks vary over time, making it vital to capture networks temporal patterns for predicting missing links with high accuracy. A biased non-negative latent factorization of tensors (BNLFT) model is very effective in extracting such patterns from dynamic data. However, a BNLFT model only integrates single bias, which cannot adequately represents the volatility of the dynamic data. To address this issue, this paper presents a Diverse Biases Non-negative Latent Factorization of Tensors (DBNT) model for accurate prediction of missing links in dynamic networks. Meanwhile, for further prediction accuracy improvement, the preprocessing bias is integrated into the DBNT model. Empirical studies on two dynamic networks datasets from real applications show that compared with state of the art predictors, a DBNT model achieves higher prediction accuracy.
动态网络链路预测的多偏差非负潜分解张量模型
动态网络随时间而变化,因此捕获网络时间模式对于高精度预测缺失链接至关重要。有偏的非负潜分解张量(BNLFT)模型在从动态数据中提取此类模式方面非常有效。然而,BNLFT模型只集成了单偏差,不能充分代表动态数据的波动性。为了解决这一问题,本文提出了一种多元偏差非负潜分解张量(DBNT)模型,用于准确预测动态网络中的缺失环节。同时,为了进一步提高预测精度,将预处理偏差集成到DBNT模型中。对两个实际应用的动态网络数据集的实证研究表明,与现有的预测器相比,DBNT模型具有更高的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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