In this paper, we study direct transfer methods for multilingual named entity recognition. Specifically, we extend the method recently proposed by Täckström et al. (2012), which is based on cross-lingual word cluster features. First, we show that by using multiple source languages, combined with self-training for target language adaptation, we can achieve significant improvements compared to using only single source direct transfer. Second, we investigate how the direct transfer system fares against a supervised target language system and conclude that between 8,000 and 16,000 word tokens need to be annotated in each target language to match the best direct transfer system. Finally, we show that we can significantly improve target language ...
We are presenting a mature text analysis application that relies heavily on multilingual Named Entit...
International audienceThis paper presents a multilingual system designed to recognize named entities...
In this paper, we present HeiNER, the multilingual Heidelberg Named Entity Resource. HeiNER contains...
In this paper, we study direct transfer methods for multilingual named entity recognition. Specifica...
Building named entity recognition (NER) models for languages that do not have much training data is ...
For languages with no annotated resources, transferring knowledge from rich-resource languages is an...
It has been established that incorporating word cluster features derived from large unlabeled corpor...
Named entity recognition aims to extract entities with specific meaning from unstructured text. Curr...
Recently, neural methods have achieved state-of-the-art (SOTA) results in Named Entity Recognition (...
Translation of named entities (NE), including proper names, temporal and numerical expressions, is v...
In this chapter, we present our contribution in addressing multi-word entity (MWEntity) recognition ...
We present a multilingual Named Entity Recognition approach based on a robust and general set of fea...
In this paper, we describe a technique to improve named entity recognition in a resource-poor langua...
As developers of a highly multilingual named entity recognition (NER) system, we face an evaluation ...
In this paper, we describe a technique to improve named entity recognition in a resource-poor langua...
We are presenting a mature text analysis application that relies heavily on multilingual Named Entit...
International audienceThis paper presents a multilingual system designed to recognize named entities...
In this paper, we present HeiNER, the multilingual Heidelberg Named Entity Resource. HeiNER contains...
In this paper, we study direct transfer methods for multilingual named entity recognition. Specifica...
Building named entity recognition (NER) models for languages that do not have much training data is ...
For languages with no annotated resources, transferring knowledge from rich-resource languages is an...
It has been established that incorporating word cluster features derived from large unlabeled corpor...
Named entity recognition aims to extract entities with specific meaning from unstructured text. Curr...
Recently, neural methods have achieved state-of-the-art (SOTA) results in Named Entity Recognition (...
Translation of named entities (NE), including proper names, temporal and numerical expressions, is v...
In this chapter, we present our contribution in addressing multi-word entity (MWEntity) recognition ...
We present a multilingual Named Entity Recognition approach based on a robust and general set of fea...
In this paper, we describe a technique to improve named entity recognition in a resource-poor langua...
As developers of a highly multilingual named entity recognition (NER) system, we face an evaluation ...
In this paper, we describe a technique to improve named entity recognition in a resource-poor langua...
We are presenting a mature text analysis application that relies heavily on multilingual Named Entit...
International audienceThis paper presents a multilingual system designed to recognize named entities...
In this paper, we present HeiNER, the multilingual Heidelberg Named Entity Resource. HeiNER contains...