Senti-Sequence: Learning to Represent Texts for Sentiment Polarity Classification

The sentiment analysis task seeks to categorize opinionated documents as having overall positive or negative opinions. This task is very important to understand unstructured text content generated by users in different domains, such as online and entertainment platforms and social networks. In this paper, we propose a novel method for predicting the overall polarity in texts. First, a new polarity-aware vector representation is automatically built for each document. Then, a bidirectional recurrent neural architecture is designed to identify the emerging polarity. The attained results outperform all of the algorithms found in the literature in the binary polarity classification task.

  • Published in:
    Applied Science
  • Type:
    Article
  • Authors:
    Ramos Magna, Andres; Zamora, Juan; Allende-Cid, Hector
  • Year:
    2024

Citation information

Ramos Magna, Andres; Zamora, Juan; Allende-Cid, Hector: Senti-Sequence: Learning to Represent Texts for Sentiment Polarity Classification, Applied Science, 2024, 14, https://www.mdpi.com/2076-3417/14/3/1033, RamosMagna.etal.2024a,