REL: An Entity Linker Standing on the Shoulders of Giants

Entity linking is a standard component in modern retrieval system that is often performed by third-party toolkits. Despite the plethora of open source options, it is difficult to find a single system that has a modular architecture where certain components may be replaced, does not depend on external sources, can easily be updated to newer Wikipedia versions, and, most important of all, has state-of-the-art performance. The REL system presented in this paper aims to fill that gap. Building on state-of-the-art neural components from natural language processing research, it is provided as a Python package as well as a web API. We also report on an experimental comparison against both well-established systems and the current state-of-the-art on standard entity linking benchmarks.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Entity Linking AIDA-CoNLL van Hulst et al. (2020) Micro-F1 strong 80.5 # 11
Entity Linking Derczynski van Hulst et al. (2020) Micro-F1 41.1 # 3
Entity Linking MSNBC van Hulst et al. (2020) Micro-F1 72.4 # 3

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