Semantic Entity Retrieval Toolkit

Open Access
Authors
Publication date 2017
Book title Neu-IR: Workshop on Neural Information Retrieval
Book subtitle accepted papers
Event SIGIR 2017 Workshop on Neural Information Retrieval (Neu-IR'17)
Number of pages 2
Publisher Ithaca, NY: ArXiv
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Unsupervised learning of low-dimensional, semantic representations of words and entities has recently gained attention. In this paper we describe the Semantic Entity Retrieval Toolkit (SERT) that provides implementations of our previously published entity representation models. The toolkit provides a unified interface to different representation learning algorithms, fine-grained parsing configuration and can be used transparently with GPUs. In addition, users can easily modify existing models or implement their own models in the framework. After model training, SERT can be used to rank entities according to a textual query and extract the learned entity/word representation for use in downstream algorithms, such as clustering or recommendation.
Document type Conference contribution
Note Workshop at SIGIR 2017. All accepted papers published on arXiv.org.
Language English
Published at https://arxiv.org/abs/1706.03757
Other links https://neu-ir.weebly.com/
Downloads
1706.03757 (Accepted author manuscript)
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