2024
DOI: 10.1371/journal.pone.0297028
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Domain adaptive learning for multi realm sentiment classification on big data

Maha Ijaz,
Naveed Anwar,
Mejdl Safran
et al.

Abstract: Machine learning techniques that rely on textual features or sentiment lexicons can lead to erroneous sentiment analysis. These techniques are especially vulnerable to domain-related difficulties, especially when dealing in Big data. In addition, labeling is time-consuming and supervised machine learning algorithms often lack labeled data. Transfer learning can help save time and obtain high performance with fewer datasets in this field. To cope this, we used a transfer learning-based Multi-Domain Sentiment Cl… Show more

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