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A Framework of Transferring Structures Across Large-scale Information Networks

机译:跨大型信息网络的结构转移框架

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The existing domain-specific methods for mining information networks in machine learning aims to represent the nodes of an information network into a vector format. However, the real-world large-scale information network cannot make well network representations by one network. When the information of the network structure transferred from one network to another network, the performance of network representation might decrease sharply. To achieve these ends, we propose a novel framework to transfer useful information across relational large-scale information networks (FTLSIN). The framework consists of a 2-layer random walks to measure the relations between two networks and predict links across them. Experiments on real-world datasets demonstrate the effectiveness of the proposed model.
机译:机器学习中用于挖掘信息网络的现有领域特定方法旨在将信息网络的节点表示为矢量格式。但是,现实世界中的大规模信息网络不能很好地用一个网络来表示网络。当网络结构的信息从一个网络转移到另一个网络时,网络表示的性能可能会急剧下降。为了实现这些目的,我们提出了一种新颖的框架,可以在关系型大规模信息网络(FTLSIN)之间传输有用的信息。该框架由两层随机游走组成,以测量两个网络之间的关系并预测它们之间的链接。在现实世界的数据集上的实验证明了该模型的有效性。

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