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Multi-Task Network Representation Learning

机译:多任务网络表示学习

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Networks, such as social networks, biochemical networks, and protein-protein interaction networks are ubiquitous in the real world. Network representation learning aims to embed nodes in a network as low-dimensional, dense, real-valued vectors, and facilitate downstream network analysis. The existing embedding methods commonly endeavor to capture structure information in a network, but lack of consideration of subsequent tasks and synergies between these tasks, which are of equal importance for learning desirable network representations. To address this issue, we propose a novel multi-task network representation learning (MTNRL) framework, which is end-to-end and more effective for underlying tasks. The original network and the incomplete network share a unified embedding layer followed by node classification and link prediction tasks that simultaneously perform on the embedding vectors. By optimizing the multi-task loss function, our framework jointly learns task-oriented embedding representations for each node. Besides, our framework is suitable for all network embedding methods, and the experiment results on several benchmark datasets demonstrate the effectiveness of the proposed framework compared with state-of-the-art methods.
机译:网络,诸如社交网络,生物化网络和蛋白质 - 蛋白质互动网络中的网络在现实世界中是普遍存在的。网络表示学习旨在将网络中的节点嵌入为低维,密集,实值的向量,并促进下游网络分析。现有的嵌入方法通常努力捕获网络中的结构信息,但缺乏对这些任务之间的后续任务和协同作用的缺乏考虑,这对于学习理想的网络表示具有相同的重要性。为了解决这个问题,我们提出了一种新的多任务网络表示学习(MTNRL)框架,它是端到端的,对基础任务更有效。原始网络和不完整的网络共享统一的嵌入层,然后是节点分类和链接预测任务,同时执行嵌入向量。通过优化多任务丢失功能,我们的框架共同了解每个节点的面向任务的嵌入式表示。此外,我们的框架适用于所有网络嵌入方法,并且在几个基准数据集上的实验结果证明了与最先进的方法相比提出的框架的有效性。

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