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Papers/Representation Learning for Attributed Multiplex Heterogen...

Representation Learning for Attributed Multiplex Heterogeneous Network

Yukuo Cen, Xu Zou, Jianwei Zhang, Hongxia Yang, Jingren Zhou, Jie Tang

2019-05-05Representation LearningProduct RecommendationNetwork EmbeddingGraph EmbeddingLink Prediction
PaperPDFCodeCodeCodeCode(official)

Abstract

Network embedding (or graph embedding) has been widely used in many real-world applications. However, existing methods mainly focus on networks with single-typed nodes/edges and cannot scale well to handle large networks. Many real-world networks consist of billions of nodes and edges of multiple types, and each node is associated with different attributes. In this paper, we formalize the problem of embedding learning for the Attributed Multiplex Heterogeneous Network and propose a unified framework to address this problem. The framework supports both transductive and inductive learning. We also give the theoretical analysis of the proposed framework, showing its connection with previous works and proving its better expressiveness. We conduct systematical evaluations for the proposed framework on four different genres of challenging datasets: Amazon, YouTube, Twitter, and Alibaba. Experimental results demonstrate that with the learned embeddings from the proposed framework, we can achieve statistically significant improvements (e.g., 5.99-28.23% lift by F1 scores; p<<0.01, t-test) over previous state-of-the-art methods for link prediction. The framework has also been successfully deployed on the recommendation system of a worldwide leading e-commerce company, Alibaba Group. Results of the offline A/B tests on product recommendation further confirm the effectiveness and efficiency of the framework in practice.

Results

TaskDatasetMetricValueModel
Link PredictionYouTubeF1-Score76.83GATNE-T
Link PredictionYouTubePR AUC81.93GATNE-T
Link PredictionYouTubeROC AUC84.61GATNE-T
Link PredictionAlibabaF1-Score89.94GATNE-I
Link PredictionAlibabaPR AUC95.04GATNE-I
Link PredictionAlibabaROC AUC84.2GATNE-I
Link PredictionTwitterF1-Score84.96GATNE-T
Link PredictionTwitterPR AUC91.77GATNE-T
Link PredictionTwitterROC AUC92.3GATNE-T
Link PredictionAlibaba-SF1-Score62.48GATNE-T
Link PredictionAlibaba-SPR AUC67.55GATNE-T
Link PredictionAlibaba-SROC AUC66.71GATNE-T
Link PredictionAmazonF1-Score92.87GATNE-T
Link PredictionAmazonPR AUC97.05GATNE-T
Link PredictionAmazonROC AUC97.44GATNE-T

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