4.6 Article

Extracting Prominent Aspects of Online Customer Reviews: A Data-Driven Approach to Big Data Analytics

Journal

ELECTRONICS
Volume 11, Issue 13, Pages -

Publisher

MDPI
DOI: 10.3390/electronics11132042

Keywords

aspect-based sentiment analysis; natural language processing; aspect-term extraction; word embedding; feature extraction

Funding

  1. Arab Republic of Egypt [EGY-6428/17]
  2. Russian Federation [EGY-6428/17]

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Sentiment analysis on social media and e-markets has become an emerging trend. In this research, we propose a clustering-based aspect term extraction model that outperforms existing models according to the test results.
Sentiment analysis on social media and e-markets has become an emerging trend. Extracting aspect terms for structure-free text is the primary task incorporated in the aspect-based sentiment analysis. This significance relies on the dependency of other tasks on the results it provides, which directly influences the accuracy of the final results of the sentiment analysis. In this work, we propose an aspect term extraction model to identify the prominent aspects. The model is based on clustering the word vectors generated using the pre-trained word embedding model. Dimensionality reduction was employed to improve the quality of word clusters obtained using the K-Means++ clustering algorithm. The proposed model was tested on the real datasets collected from online retailers' websites and the SemEval-14 dataset. Results show that our model outperforms the baseline models.

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