Supervised Typing Of Big Graphs Using Semantic Embeddings | Awesome Learning to Hash Add your paper to Learning2Hash

Supervised Typing Of Big Graphs Using Semantic Embeddings

Mayank Kejriwal, Pedro Szekely . Proceedings of The International Workshop on Semantic Big Data 2017 – 11 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Efficiency Memory Efficiency Recommender Systems Supervised Unsupervised

We propose a supervised algorithm for generating type embeddings in the same semantic vector space as a given set of entity embeddings. The algorithm is agnostic to the derivation of the underlying entity embeddings. It does not require any manual feature engineering, generalizes well to hundreds of types and achieves near-linear scaling on Big Graphs containing many millions of triples and instances by virtue of an incremental execution. We demonstrate the utility of the embeddings on a type recommendation task, outperforming a non-parametric feature-agnostic baseline while achieving 15x speedup and near-constant memory usage on a full partition of DBpedia. Using state-of-the-art visualization, we illustrate the agreement of our extensionally derived DBpedia type embeddings with the manually curated domain ontology. Finally, we use the embeddings to probabilistically cluster about 4 million DBpedia instances into 415 types in the DBpedia ontology.

Similar Work