This work focuses on Portuguese Named Entity Recognition (NER) in the Geology domain. The only domain-specific dataset in the Portuguese language annotated for Named Entity Recognition is the GeoCorpus. Our approach relies on Bidirecional Long Short-Term Memory - Conditional Random Fields neural networks (BiLSTM-CRF) - a widely used type of network for this area of research - that use vector and tensor embedding representations. We used three types of embedding models (Word Embeddings, Flair Embeddings, and Stacked Embeddings) under two versions (domain-specific and generalized). We originally trained the domain specific Flair Embeddings model with a generalized context in mind, but we fine-tuned with domain-specific Oil and Gas corpora, as...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
Most state-of-the-art approaches for named-entity recognition (NER) use semi supervised information ...
Representing words with semantic distributions to create ML models is a widely used technique to per...
Over the last decades, oil and gas companies have been facing a continuous increase of data collecte...
There is currently few research in using deep learning (DL) applied to Named Entities Recognition (N...
This article presents the results of a study concerning named-entity recognition and classification ...
Nearly 80% of all potentially usable business information exists in unstructured form, primarily as ...
O Reconhecimento de Entidades Mencionadas (REM) é uma subtarefa da extração de informações e tem com...
Named Entity Recognition involves automatically identifying and classifying entities such as persons...
Named Entity Recognition (NER) is an essential step for many natural language processing tasks, incl...
The task of Named Entity Recognition (NER) is aimed at identifying named entities in a given text an...
Abstract A variety of detailed data about geological topics and geoscience knowledge are buried in t...
Language Models have long been a prolific area of study in the field of Natural Language Processing ...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
Most state-of-the-art approaches for named-entity recognition (NER) use semi supervised information ...
Representing words with semantic distributions to create ML models is a widely used technique to per...
Over the last decades, oil and gas companies have been facing a continuous increase of data collecte...
There is currently few research in using deep learning (DL) applied to Named Entities Recognition (N...
This article presents the results of a study concerning named-entity recognition and classification ...
Nearly 80% of all potentially usable business information exists in unstructured form, primarily as ...
O Reconhecimento de Entidades Mencionadas (REM) é uma subtarefa da extração de informações e tem com...
Named Entity Recognition involves automatically identifying and classifying entities such as persons...
Named Entity Recognition (NER) is an essential step for many natural language processing tasks, incl...
The task of Named Entity Recognition (NER) is aimed at identifying named entities in a given text an...
Abstract A variety of detailed data about geological topics and geoscience knowledge are buried in t...
Language Models have long been a prolific area of study in the field of Natural Language Processing ...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
We propose a novel Named Entity Recognition (NER) system based on a machine learning technique and a...
Most state-of-the-art approaches for named-entity recognition (NER) use semi supervised information ...
Representing words with semantic distributions to create ML models is a widely used technique to per...