ARTFSC Average Relative Term Frequency Sentiment Classification

Journal Title: INTERNATIONAL JOURNAL OF COMPUTERS & TECHNOLOGY - Year 2014, Vol 12, Issue 6

Abstract

Sentiment Classification refers to the computational techniques for classifying whether the sentiments of text are positive or negative. Statistical Techniques based on Term Presence and Term Frequency, using Support Vector Machine are popularly used for Sentiment Classification. This paper presents an approach for classifying a term as positive or negative based on its average frequency in positively tagged documents in comparison with negatively tagged documents. Our approach is based on term weighting techniques that are used for information retrieval and sentiment classification. It differs significantly from these traditional methods due to our model of logarithmic differential average term distribution for sentiment classification. Terms with nearly equal distribution in positively tagged documents and negatively tagged documents were classified as a Senti-stop-word and discarded. The proportional distribution of a term to be classified as Senti-stop-word was determined experimentally. Our model was evaluated by comparing it with state of art techniques for sentiment classification using the movie review dataset.

Authors and Affiliations

Kranti Vithal Ghag, Ketan Shah

Keywords

Related Articles

An Adaptable Security Framework for Wireless Sensor Networks

The design of secure and survivable nodes is one of the most vital issues in designing energy-efficient protocols for wireless sensor network where the energy, memory and computational power of sensor nodes are limited...

A Study of Training and Development at Private Educational Institutions- with special reference to Malwa Region- Punjab

This paper addresses the main issues of training and development for private sector particularly educational institutions. This Paper has been made to understand how training and development in private educational Instit...

Service-Oriented Architecture In Automation Industries

This paper addresses issues and difficulties in the advancement of cutting edge installed gadgets, applications and its administration that Service-Oriented Architecture (SOA) handles in Automation Industries (AI).Becaus...

Face Recognition Using Eigen Face Based Technique Utilizing the Concept of Principal Component Analysis

Face recognition has been an active research area since late 1980s [1]. Eigenface approach is one of the earliest appearance-based face recognition methods, which was developed by M. Turk and A. Pentland [1] in 1991. In...

A REVIEW ON DYNAMIC RESOURCE ALLOCATION BASED ON LEASE TYPES IN CLOUD ENVIRONMENT

Load balancing is one of the essential factors to enhance the working performance of the cloud service provider. Cloud Computing is an emerging computing paradigm. It aims to share data, calculations, and service transpa...

Download PDF file
  • EP ID EP650478
  • DOI 10.24297/ijct.v12i6.3141
  • Views 84
  • Downloads 0

How To Cite

Kranti Vithal Ghag, Ketan Shah (2014). ARTFSC Average Relative Term Frequency Sentiment Classification. INTERNATIONAL JOURNAL OF COMPUTERS & TECHNOLOGY, 12(6), 3591-3601. https://europub.co.uk/articles/-A-650478