Search for collections on Wintec Research Archive

Clustering Arabic Tweets for Sentiment Analysis

Citation: UNSPECIFIED.

This is the latest version of this item.

[thumbnail of Programme] PDF (Programme)
final-detailed-program-17102017.pdf - Supplemental Material
Available under License Creative Commons Attribution Non-commercial No Derivatives.

Download (1MB)

Abstract

The focus of this study is to evaluate the impact of linguistic preprocessing and similarity functions for clustering Arabic Twitter tweets. The experiments apply an optimized version of the standard K-Means algorithm to assign tweets into positive and negative categories. The results show that root-based stemming has a significant advantage over light stemming in all settings. The Averaged Kullback-Leibler Divergence similarity function clearly outperforms the Cosine, Pearson Correlation, Jaccard Coefficient and Euclidean functions. The combination of the Averaged Kullback-Leibler Divergence and root-based stemming achieved the highest purity of 0.764 while the second-best purity was 0.719. These results are of importance as it is contrary to normal-sized documents where, in many information retrieval applications, light stemming performs better than root-based stemming and the Cosine function is commonly used.

Item Type: Paper presented at a conference, workshop or other event, and published in the proceedings
Uncontrolled Keywords: Sentiment analysis, Arabic stemmers, Clustering algorithms, K-Means clustering algorithm, Bisect K-Means clustering algorithm
Subjects: Q Science > QA Mathematics > QA76 Computer software
Divisions: Schools > Centre for Business, Information Technology and Enterprise > School of Information Technology
Depositing User: Diab Abuaiadah
Date Deposited: 10 Apr 2018 01:48
Last Modified: 21 Jul 2023 06:50
URI: http://researcharchive.wintec.ac.nz/id/eprint/5925

Available Versions of this Item

Actions (login required)

View Item
View Item