Back to the Feature, in Entailment Detection and Similarity Measurement for Portuguese
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Springer
Abstract
This paper describes a system to identify entailment and
quantify semantic similarity among pairs of Portuguese sentences. The
system relies on a corpus to build a supervised model, and employs the
same features regardless of the task. Our experiments cover two types of
features, contextualized embeddings and lexical features, which we eval-
uate separately and in combination. The model is derived from a voting
strategy on an ensemble of distinct regressors, on similarity measure-
ment, or calibrated classifiers, on entailment detection. Applying such
system to other languages mainly depends on the availability of cor-
pora, since all features are either multilingual or language independent.
We obtain competitive results on a recent Portuguese corpus, where our
best result is obtained by joining embeddings with lexical features.
Description
Keywords
Citation
Pedro Fialho, Luı́sa Coheur, and Paulo Quaresma. Back to the feature, in entailment detec-
tion and similarity measurement for portuguese. In Paulo Quaresma, Renata Vieira, San-
dra M. Aluı́sio, Helena Moniz, Fernando Batista, and Teresa Gonçalves, editors, Computa-
tional Processing of the Portuguese Language - 14th International Conference, PROPOR
2020, Evora, Portugal, March 2-4, 2020, Proceedings, volume 12037 of Lecture Notes in
Computer Science, pages 164–173. Springer, 2020.