Marcos Didonet Del Fabro

Also published as: Marcos Didonet Del Fabro, Marcus Didonet Del Fabro


2021

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C3SL at SemEval-2021 Task 1: Predicting Lexical Complexity of Words in Specific Contexts with Sentence Embeddings
Raul Almeida | Hegler Tissot | Marcos Didonet Del Fabro
Proceedings of the 15th International Workshop on Semantic Evaluation (SemEval-2021)

We present our approach to predicting lexical complexity of words in specific contexts, as entered LCP Shared Task 1 at SemEval 2021. The approach consists of separating sentences into smaller chunks, embedding them with Sent2Vec, and reducing the embeddings into a simpler vector used as input to a neural network, the latter for predicting the complexity of words and expressions. Results show that the pre-trained sentence embeddings are not able to capture lexical complexity from the language when applied in cross-domain applications.

2015

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UFPRSheffield: Contrasting Rule-based and Support Vector Machine Approaches to Time Expression Identification in Clinical TempEval
Hegler Tissot | Genevieve Gorrell | Angus Roberts | Leon Derczynski | Marcos Didonet Del Fabro
Proceedings of the 9th International Workshop on Semantic Evaluation (SemEval 2015)

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Analysis of Temporal Expressions Annotated in Clinical Notes
Hegler Tissot | Angus Roberts | Leon Derczynski | Genevieve Gorrell | Marcus Didonet Del Fabro
Proceedings of the 11th Joint ACL-ISO Workshop on Interoperable Semantic Annotation (ISA-11)