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IBERAMIA
2004
Springer

Improving the Performance of a Named Entity Extractor by Applying a Stacking Scheme

13 years 10 months ago
Improving the Performance of a Named Entity Extractor by Applying a Stacking Scheme
Abstract. In this paper we investigate the way of improving the performance of a Named Entity Extraction (NEE) system by applying machine learning techniques and corpus transformation. The main resources used in our experiments are the publicly available tagger TnT and a corpus of Spanish texts in which named entities occurrences are tagged with BIO tags. We split the NEE task into two subtasks 1) Named Entity Recognition (NER) that involves the identification of the group of words that make up the name of an entity and 2) Named Entity Classification (NEC) that determines the category of a named entity. We have focused our work on the improvement of the NER task, generating four different taggers with the same training corpus and combining them using a stacking scheme. We improve the baseline of the NER task (Fβ=1 value
José A. Troyano, Víctor J. Dí
Added 01 Jul 2010
Updated 01 Jul 2010
Type Conference
Year 2004
Where IBERAMIA
Authors José A. Troyano, Víctor J. Díaz, Fernando Enríquez, Luisa Romero
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