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Revisiting Semi-Supervised Learning with Graph Embeddings

2016-03-29Code Available1· sign in to hype

Zhilin Yang, William W. Cohen, Ruslan Salakhutdinov

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Abstract

We present a semi-supervised learning framework based on graph embeddings. Given a graph between instances, we train an embedding for each instance to jointly predict the class label and the neighborhood context in the graph. We develop both transductive and inductive variants of our method. In the transductive variant of our method, the class labels are determined by both the learned embeddings and input feature vectors, while in the inductive variant, the embeddings are defined as a parametric function of the feature vectors, so predictions can be made on instances not seen during training. On a large and diverse set of benchmark tasks, including text classification, distantly supervised entity extraction, and entity classification, we show improved performance over many of the existing models.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
CiteseerPlanetoid*Accuracy64.7Unverified
CoraPlanetoid*Accuracy75.7Unverified
NELLPlanetoid*Accuracy61.9Unverified
PubmedPlanetoid*Accuracy77.2Unverified
USA Air-TrafficPlanetoid*Accuracy64.7Unverified

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