Title of article :
FEATURE EXTRACTION ENCHANCEMENT IN USERS’ ATTITUDE DETECTION
Author/Authors :
ibrahiem, s. s. ain shams university - faculty of computer and information sciences - department computer science, Cairo, Egypt , bahnasy, k. a. ain shams university - faculty of computer and information sciences - department information system, Cairo, Egypt , morsey, m. m. ain shams university - faculty of computer and information sciences - department computer science, Cairo, Egypt , aref, m. m. ain shams university - faculty of computer and information sciences - department computer science, Cairo, Egypt
Abstract :
The social network are the trendiest applications which are developed for sharing opinions about different topics or events e.g. Twitter. As a result, this kind of applications becomes abundant data source for NLP researchers to innovate and enhance techniques that can track users’ attitudes towards target event, topic or even another person. These users’ attitudes are playing a pivotal role for decision makers, so they can take an appropriate action towards users’ negative or positive reactions either. This paper focuses on users’ attitude detection based on new feature set and applies on different machine learning models that can monitor and enhance users’ attitude identification system. Annotated emotion tweets dataset and word emotion lexicon are used in training, building, and testing classification models.
Keywords :
Emotion classification , Natural Language processing , Sentiment analysis
Journal title :
International Journal of Intelligent Computing and Information Sciences
Journal title :
International Journal of Intelligent Computing and Information Sciences