Robust Disambiguation of Named Entities in Text

Disambiguating named entities in naturallanguage text maps mentions of ambiguous names onto canonical entities like people or places, registered in a knowledge base such as DBpedia or YAGO. This paper presents a robust method for collective disambiguation, by harnessing context from knowledge bases and using a new form of coherence graph. It unifies prior approaches into a comprehensive framework that combines three measures: the prior probability of an entity being mentioned, the similarity between the contexts of a mention and a candidate entity, as well as the coherence among candidate entities for all mentions together. The method builds a weighted graph of mentions and candidate entities, and computes a dense subgraph that approximates the best joint mention-entity mapping. Experiments show that the new method significantly outperforms prior methods in terms of accuracy, with robust behavior across a variety of inputs.

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Datasets


Introduced in the Paper:

AIDA CoNLL-YAGO

Used in the Paper:

CoNLL

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Entity Linking AIDA-CoNLL Hoffart et al. (2011) Micro-F1 strong 72.8 # 15
Entity Disambiguation AIDA-CoNLL Hoffart et al. In-KB Accuracy 82.29 # 18

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