Towards the creation of an ensemble model for sentiment analysis based on naïve bayes and support vector machine for product review classification: A Literature Survey

Abstract: 
Sentiment analysis has demonstrated that the automation and computational recognition of sentiments is possible and evolving, due to factors such as; emergence of new technological trends and the continued dynamic state of the human language. Sentiment analysis is therefore an Information extraction task that aims at obtaining private sentiments that can either be expressed as positive or negative, toward a specific object or subject. However, social media platforms are marred with informal texts that make extraction and parsing of relevant information a problem for most systems and models. This can pose a challenge to companies, individuals or organizations that need to make specific business decisions based on the available data. To overcome such inefficiencies, this research proposes an ensemble model on the basis of performance evaluation on sentiment classification of product reviews. The research will explore the use of a detailed pre-processing technique with the integration two classifiers, Naïve Bayes and SVM as an ensemble. The effect (in terms of performance measure and evaluation) of such a computational model, and how the model can be implemented within machine learning approaches to sentiment analysis, has formed grounds for this research.
Language: 
English
Date of publication: 
2018
Country: 
Region Focus: 
East Africa
Volume: 
17
Number: 
3
Pagination: 
736-749
Collection: 
RUFORUM Working document series
Agris Subject Categories: 
Licence conditions: 
Open Access
Access restriction: 
Form: 
Web resource
ISSN: 
1607-9345
E_ISSN: 
Edition: 
Extent: 
14