Statistical Link Label Modeling for Sign Prediction: Smoothing Sparsity by Joining Local and Global Information

Amin Javari, Hongxiang Qiu, Elham Barzegaran, M. Jalili, K. Chang
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引用次数: 18

Abstract

One of the major issues in signed networks is to use network structure to predict the missing sign of an edge. In this paper, we introduce a novel probabilistic approach for the sign prediction problem. The main characteristic of the proposed models is their ability to adapt to the sparsity level of an input network. Building a model that has an ability to adapt to the sparsity of the data has not yet been considered in the previous related works. We suggest that there exists a dilemma between local and global structures and attempt to build sparsity adaptive models by resolving this dilemma. To this end, we propose probabilistic prediction models based on local and global structures and integrate them based on the concept of smoothing. The model relies more on the global structures when the sparsity increases, whereas it gives more weights to the information obtained from local structures for low levels of the sparsity. The proposed model is assessed on three real-world signed networks, and the experiments reveal its consistent superiority over the state of the art methods. As compared to the previous methods, the proposed model not only better handles the sparsity problem, but also has lower computational complexity and can be updated using real-time data streams.
用于符号预测的统计链接标签建模:通过连接局部和全局信息平滑稀疏性
签名网络的主要问题之一是使用网络结构来预测边缘缺失的符号。在本文中,我们引入了一种新的符号预测问题的概率方法。所提出的模型的主要特点是它们能够适应输入网络的稀疏程度。建立一个能够适应数据稀疏性的模型在之前的相关工作中还没有考虑到。我们认为存在局部和全局结构之间的两难选择,并试图通过解决这一困境来构建稀疏性自适应模型。为此,我们提出了基于局部和全局结构的概率预测模型,并基于平滑的概念将它们整合起来。当稀疏度增加时,该模型更多地依赖全局结构,而当稀疏度较低时,该模型对从局部结构获得的信息给予更多的权重。提出的模型在三个真实的签名网络上进行了评估,实验表明其优于当前最先进的方法。与以往的方法相比,该模型不仅更好地处理了稀疏性问题,而且计算复杂度更低,可以利用实时数据流进行更新。
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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