Culjak, MarkoSpitz, AndreasWest, RobertArora, Akhil2022-10-242022-10-242022-10-242022-01-01https://infoscience.epfl.ch/handle/20.500.14299/191572WOS:000860760300030Named entity linking (NEL) in news is a challenging endeavour due to the frequency of unseen and emerging entities, which necessitates the use of unsupervised or zero-shot methods. However, such methods tend to come with caveats, such as no integration of suitable knowledge bases (like Wikidata) for emerging entities, a lack of scalability, and poor interpretability. Here, we consider person disambiguation in QUOTEBANK, a massive corpus of speaker-attributed quotations from the news, and investigate the suitability of intuitive, lightweight, and scalable heuristics for NEL in web-scale corpora. Our best performing heuristic disambiguates 94% and 63% of the mentions on QUOTEBANK and the AIDA-CoNLL benchmark, respectively. Additionally, the proposed heuristics compare favourably to the state-of-the-art unsupervised and zero-shot methods, EIGENTHEMES and mGENRE, respectively, thereby serving as strong baselines for unsupervised and zero-shot entity linking.Computer Science, Artificial IntelligenceComputer Science, Interdisciplinary ApplicationsLinguisticsComputer ScienceStrong Heuristics for Named Entity Linkingtext::conference output::conference proceedings::conference paper