Topological Similarity and Centrality Driven Hybrid Deep Learning for Temporal Link Prediction

Abubakhari Sserwadda, Alper Ozcan, Y. Yaslan
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Abstract

Several real-world phenomena, including social, communication, transportation, and biological networks, can be efficiently expressed as graphs. This enables the deployment of graph algorithms to infer information from such complex network interactions to enhance graph applications’ accuracy, including link prediction, node classification, and clustering. However, the large size and complexity of the network data limit the efficiency of the learning algorithms in making decisions from such graph datasets. To overcome these limitations, graph embedding techniques are usually adopted. However, many studies not only assume static networks but also pay less attention to preserving the network topological and centrality information, which information is key in analyzing networks. In order to fill these gaps, we propose a novel end-to-end unified Topological Similarity and Centrality driven Hybrid Deep Learning model for Temporal Link Prediction (TSC-TLP). First, we extract topological similarity and centrality-based features from the raw networks. Next, we systematically aggregate these topological and centrality features to act as inputs for the encoder. In addition, we leverage the long short-term memory (LSTM) layer to learn the underlying temporal information in the graph snapshots. Lastly, we impose topological similarity and centrality constraints on the model learning to enforce preserving of topological structure and node centrality role of the input graphs in the learned embeddings. The proposed TSC-TLP is tested on 3 real-world temporal social networks. On average, it exhibits a 4% improvement in link prediction accuracy and a 37% reduction in MSE on centrality prediction over the best benchmark.
拓扑相似性和中心性驱动的混合深度学习用于时间链接预测
一些现实世界的现象,包括社会、通信、交通和生物网络,可以有效地用图形表示。这使得部署图算法能够从这种复杂的网络交互中推断信息,以提高图应用程序的准确性,包括链接预测、节点分类和聚类。然而,网络数据的庞大规模和复杂性限制了从此类图数据集进行决策的学习算法的效率。为了克服这些限制,通常采用图嵌入技术。然而,许多研究只假设网络是静态的,而对网络拓扑和中心性信息的保留关注较少,而这些信息是分析网络的关键。为了填补这些空白,我们提出了一种新的端到端统一拓扑相似性和中心性驱动的时间链路预测混合深度学习模型(TSC-TLP)。首先,我们从原始网络中提取拓扑相似性和基于中心性的特征。接下来,我们系统地聚合这些拓扑和中心性特征,作为编码器的输入。此外,我们利用长短期记忆(LSTM)层来学习图快照中的底层时间信息。最后,我们在模型学习中施加拓扑相似性和中心性约束,以确保在学习的嵌入中保留输入图的拓扑结构和节点中心性。提出的TSC-TLP在3个现实社会网络上进行了测试。平均而言,与最佳基准相比,它在链路预测精度方面提高了4%,在中心性预测方面的MSE降低了37%。
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