Gupta, Chitrank ; Jain, Yash ; De, Abir ; Chakrabarti, Soumen (2021) Integrating Transductive and Inductive Embeddings Improves Link Prediction Accuracy In: The 30th ACM International Conference on Information and Knowledge Management.
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Official URL: http://doi.org/10.1145/3459637.3482125
Related URL: http://dx.doi.org/10.1145/3459637.3482125
Abstract
In recent years, inductive graph embedding models, viz., graph neural networks (GNNs) have become increasingly accurate at link prediction (LP) in online social networks. The performance of such networks depends strongly on the input node features, which vary across networks and applications. Selecting appropriate node features remains application-dependent and generally an open question. Moreover, owing to privacy and ethical issues, use of personalized node features is often restricted. In fact, many publicly available data from online social network do not contain any node features (e.g., demography). In this work, we provide a comprehensive experimental analysis which shows that harnessing a transductive technique (e.g., Node2Vec) for obtaining initial node representations, after which an inductive node embedding technique takes over, leads to substantial improvements in link prediction accuracy. We demonstrate that, for a wide variety of GNN variants, node representation vectors obtained from Node2Vec serve as high quality input features to GNNs, thereby improving LP performance. References
Item Type: | Conference or Workshop Item (Paper) |
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Source: | Copyright of this article belongs to Association for Computing Machinery |
ID Code: | 130857 |
Deposited On: | 01 Dec 2022 04:20 |
Last Modified: | 01 Dec 2022 04:20 |
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