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- Title
Deep Learning Applied on Refined Opinion Review Datasets.
- Authors
Jost, Ingo; Valiati, Joáo Francisco
- Abstract
Deep Learning has been successfully applied in challenging areas, such as image recognition and audio classification. However, Deep Learning has not yet reached the same performance when employed in textual data classification, including Opinion Mining. In models that implement a deep architecture, Deep Learning is characterized by the automatic feature selection step. The impact of previous data refinement in the preprocessing step before the application of Deep Learning is investigated to identify opinion polarity. The refinement includes the use of a classical procedure of textual content and a popular feature selection technique. The results of the experiments overcome the results of the current literature with the Deep Belief Network application in opinion classification. In addition to overcoming the results, their presentation is broader than the related works, considering the change of parameter variables. We prove that combining feature selection with a basic preprocessing step, aiming to increase data quality, might achieve promising results with Deep Belief Network implementation.
- Subjects
DEEP learning; SENTIMENT analysis; FEATURE selection; POLARITY (Linguistics); DATA quality
- Publication
Inteligencia Artificial: Revista Iberoamericana de Inteligencia Artificial, 2018, Vol 21, Issue 62, p91
- ISSN
1137-3601
- Publication type
Article
- DOI
10.4114/intartif.vol21iss62pp91-102