Explorando métodos non-supervisados para calcular a similitude semántica textual

  1. Gamallo, Pablo
  2. Pereira-Fariña, Martín
Journal:
Linguamática

ISSN: 1647-0818

Year of publication: 2018

Volume: 10

Issue: 2

Pages: 63-68

Type: Article

DOI: 10.21814/LM.10.2.275 DIALNET GOOGLE SCHOLAR lock_openOpen access editor

More publications in: Linguamática

Abstract

This paper presents some unsupervised methods for detecting semantic textual similarity, which are based on distributional models and dependency parsing. The systems are evaluated using the dataset realased by the ASSIN Shared Task co-located with PROPOR 2016. The more basic methods offer better behavior than the more complex ones, which include syntactic-semantic information in sentence analysis. Finally, the use of distributional models built automatically from corpora provides results comparable to strategies that use external lexical resources built manually.