PeerJ Computer Science (Jul 2022)

Improving word embeddings in Portuguese: increasing accuracy while reducing the size of the corpus

  • José Pedro Pinto,
  • Paula Viana,
  • Inês Teixeira,
  • Maria Andrade

DOI
https://doi.org/10.7717/peerj-cs.964
Journal volume & issue
Vol. 8
p. e964

Abstract

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The subjectiveness of multimedia content description has a strong negative impact on tag-based information retrieval. In our work, we propose enhancing available descriptions by adding semantically related tags. To cope with this objective, we use a word embedding technique based on the Word2Vec neural network parameterized and trained using a new dataset built from online newspapers. A large number of news stories was scraped and pre-processed to build a new dataset. Our target language is Portuguese, one of the most spoken languages worldwide. The results achieved significantly outperform similar existing solutions developed in the scope of different languages, including Portuguese. Contributions include also an online application and API available for external use. Although the presented work has been designed to enhance multimedia content annotation, it can be used in several other application areas.

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