In this paper, we describe our proposed method for the SemEval 2022 Task 11: Multilingual Complex Named Entity Recognition (MultiCoNER). The goal of this task is to locate and classify named entities in unstructured short complex texts in 11 different languages.After training a variety of contextual language models on the NER dataset, we used an ensemble strategy based on a majority vote to finalize our model. We evaluated our proposed approach on the multilingual NER dataset at SemEval-2022. The ensemble model provided consistent improvements against the individual models on the multilingual track, achieving a macro F1 performance of 65.2%. However, our results were significantly outperformed by the top ranking systems, achieving thus a ba...
Building named entity recognition (NER) models for languages that do not have much training data is ...
In this chapter, we present our contribution in addressing multi-word entity (MWEntity) recognition ...
For languages with no annotated resources, transferring knowledge from rich-resource languages is an...
In this paper, we present a system for detecting complex named entities in multilingual and code-mix...
This paper summarizes the participation of the L3i laboratory of the University of La Rochelle in th...
Publisher Copyright: © 2022 Association for Computational Linguistics.This paper presents the system...
Identifying named entities is, in general, a practical and challenging task in the field of Natural ...
This paper presents our participation at the shared task on multilingual named entity recognition at...
This paper presents the approaches and systems of the UA-KO team for the Korean portion of SemEval-2...
Abstract. In this paper we introduce a multilingual Named Entity Recognition (NER) system that uses ...
We present a multilingual Named Entity Recognition approach based on a robust and general set of fea...
International audienceThis paper presents our participation at the shared task on multilingual named...
International audienceThis paper presents a multilingual system designed to recognize named entities...
Abstract. We present a named-entity recognition (NER) system for parallel multilingual text. Our sys...
Named Entity Recognition and Classification (NERC) is an important component of applications like Opi...
Building named entity recognition (NER) models for languages that do not have much training data is ...
In this chapter, we present our contribution in addressing multi-word entity (MWEntity) recognition ...
For languages with no annotated resources, transferring knowledge from rich-resource languages is an...
In this paper, we present a system for detecting complex named entities in multilingual and code-mix...
This paper summarizes the participation of the L3i laboratory of the University of La Rochelle in th...
Publisher Copyright: © 2022 Association for Computational Linguistics.This paper presents the system...
Identifying named entities is, in general, a practical and challenging task in the field of Natural ...
This paper presents our participation at the shared task on multilingual named entity recognition at...
This paper presents the approaches and systems of the UA-KO team for the Korean portion of SemEval-2...
Abstract. In this paper we introduce a multilingual Named Entity Recognition (NER) system that uses ...
We present a multilingual Named Entity Recognition approach based on a robust and general set of fea...
International audienceThis paper presents our participation at the shared task on multilingual named...
International audienceThis paper presents a multilingual system designed to recognize named entities...
Abstract. We present a named-entity recognition (NER) system for parallel multilingual text. Our sys...
Named Entity Recognition and Classification (NERC) is an important component of applications like Opi...
Building named entity recognition (NER) models for languages that do not have much training data is ...
In this chapter, we present our contribution in addressing multi-word entity (MWEntity) recognition ...
For languages with no annotated resources, transferring knowledge from rich-resource languages is an...