Beyond Observed Connections : Link Injection
In this paper, we proposed the \textit{link injection}, a novel method that helps any differentiable graph machine learning models to go beyond observed connections from the input data in an end-to-end learning fashion. It finds out (weak) connections in favor of the current task that is not present...
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Zusammenfassung: | In this paper, we proposed the \textit{link injection}, a novel method that
helps any differentiable graph machine learning models to go beyond observed
connections from the input data in an end-to-end learning fashion. It finds out
(weak) connections in favor of the current task that is not present in the
input data via a parametric link injection layer. We evaluate our method on
both node classification and link prediction tasks using a series of
state-of-the-art graph convolution networks. Results show that the link
injection helps a variety of models to achieve better performances on both
applications. Further empirical analysis shows a great potential of this method
in efficiently exploiting unseen connections from the injected links. |
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DOI: | 10.48550/arxiv.2009.04447 |