Search results

1 – 1 of 1
Article
Publication date: 15 March 2013

Zied Kechaou, Ali Wali, Mohamed Ben Ammar, Hichem Karray and Adel M. Alimi

Despite the actual prevalence of diverse types of multimedia information, research on video news is still in an early stage. Improving the accessibility of video news seems worth…

Abstract

Purpose

Despite the actual prevalence of diverse types of multimedia information, research on video news is still in an early stage. Improving the accessibility of video news seems worth investigating, therefore, the purpose of this paper is to present a new combination mode of video news text clustering and selection. This method is useful for sorting out and classifying various types of news videos and media texts based on sentiment analysis.

Design/methodology/approach

A novel system is proposed, whereby video news are identified and categorized into good or bad ones via the authors' suggested Hidden Markov Model (HMM) and Support Vector Machine (SVM) hybrid learning method. Actually, an exploratory video news sentiment analysis case study, conducted on various news databases, has proven that the feature‐selection‐combining method, encompassing the Information Gain (IG), Mutual Information (MI) and CHI‐statistic (CHI), performs the best classification, which testifies and highlights the designed framework's value.

Findings

In fact, the system turns out to be applicable to several areas, especially video news, where annotation and personal perspectives affect the accuracy aspect.

Research limitations/implications

The present work shows the way for further research pertaining to the personal attitudes and the application of different linguistic techniques during the classification.

Originality/value

The achieved results are so promising, encouraging and satisfactory, that they highlight the originality and efficiency of the authors' approach as an effective tool enabling to secure an easy access to video news and multi‐media texts.

Details

Journal of Systems and Information Technology, vol. 15 no. 1
Type: Research Article
ISSN: 1328-7265

Keywords

1 – 1 of 1