Using Machine Learning Techniques for Subjectivity Analysis based on Lexical and Non-Lexical Feature

Using Machine Learning Techniques for Subjectivity Analysis based on Lexical and Non-Lexical Features

Hikmat Ullah Khan and Ali Daud

Department of Computer Science, COMSATS Institute of Information, Pakistan

Abstract: Machine learning techniques have been used to address various problems and classification of  documents is one of the main applications of such techniques. Opinion mining has emerged as an active research domain due to its wide range of applications such as multi-document summarization, opinion mining of documents and users’ reviews analysis improving answers of opinion questions in forums. Existing works classify the documents using lexicon-based features only. In this work, four state of the art machine learning techniques have been applied to classify the content into subjective and objective. The subjective content contains opinionative information while objective content contains factual information. The main contribution lies in the introduction of non-lexical features and content based features in addition to the use of a conventional lexicon based feature set. We compare results of four machine learning techniques and discuss  performance in diverse categories of lexical and non-lexical features. The comparative analysis has been accomplished using standard performance evaluation measures and experiments have been performed on a real-world dataset of the online forum related to diverse topics. It has been proven that proposed content and non-lexical thread specific features play their role in the classification of subjective and non-subjective content.

Keywords: Machine Learning, classification, opinion mining, lexicon, non-lexical features.

Received December 28, 2014; accepted Augest 31, 2015

 

Full Text

________________________________________________________________________________________________________________________________________________________________________

 

Read 2403 times Last modified on Sunday, 19 August 2018 02:23
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…