>
Fa   |   Ar   |   En
   Comparative evaluation of algorithms for sentiment analysis over social networking services  
   
نویسنده krouska a. ,troussas c. ,virvou m.
منبع journal of universal computer science - 2017 - دوره : 23 - شماره : 8 - صفحه:755 -768
چکیده    Twitter is a highly popular social networking service and a web-based communication platform with million users exchanging daily public messages,namely tweets,expressing their opinion and feelings towards various issues. twitter represents one of the largest and most dynamic datasets for data mining and sentiment analysis. therefore,twitter sentiment analysis constitutes a prominent and an active research area with significant applications in industry and academia. the purpose of this paper is to provide a guideline for the decision of optimal algorithms for sentiment analysis services. in this context,five well-known learning-based classifiers (naïve bayes,support vector machine,k-nearest neighbor,logistic regression and c4.5) and a lexicon-based approach (sentistrength) have been evaluated based on confusion matrices,using three different datasets (omd,hcr and sts-gold) and two test models (percentage split and cross validation). the results demonstrate the superiority of naïve bayes and support vector machine regardless of datasets and test methods. © j.ucs.
کلیدواژه Learning machines; Lexicon-based classification; Polarity detection; Sentiment analysis; Social networking services; Twitter
آدرس university of piraeus, Greece, university of piraeus, Greece, university of piraeus, Greece
 
     
   
Authors
  
 
 

Copyright 2023
Islamic World Science Citation Center
All Rights Reserved