An Effective Framework for Tweet Level Sentiment Classification using Recursive Text Pre-Processing Approach
Journal Title: International Journal of Advanced Computer Science & Applications - Year 2019, Vol 10, Issue 6
Abstract
With around 330 million people around the globe tweet 6000 times per second to express their feelings about a product, policy, service, or an event. Twitter message majorly consists of thoughts. Thoughts are mostly expressed as a text and it is an open challenge to extract some insight from free text. The scope of this work is to build an effective tweet level sentiment classification framework that may use these thoughts to know collective sentiment of the folk on a particular subject. Furthermore, this work also analyses the impact of proposed tweet level recursive text pre-processing approach on overall classification results. This work achieved up to 4 points accuracy improvement over baseline approach besides mitigating feature vector space.
Authors and Affiliations
Muhammad Bux Alvi, Naeem A. Mahoto, Mukhtiar A. Unar, M. Akram Shaikh
Self-Healing Hybrid Protection Architecture for Passive Optical Networks
Expanding size of passive optical networks (PONs) along with high availability expectation makes the reliability performance a crucial need. Most protection architectures utilize redundant network components to enhance n...
Question Answering Systems: A Review on Present Developments, Challenges and Trends
Question Answering Systems (QAS) are becoming a model for the future of web search. In this paper we present a study of the latest research in this area. We collected publications from top conferences and journals on inf...
Intelligent Irrigation Management System
It is widely known that water resources are decreasing around the world. Rapid urbanization, population growth, industries and the expansion of agriculture are increasing demand for freshwater. In most countries, includi...
The Identification of Randles Impedance Model Parameters of a PEM Fuel Cell by the Least Square Method
One of the problems of industrial development of fuel cells is the reliability of their performances with time. The solution of this problem is through by the development of improved diagnostic methods such as the identi...
Novel LVCSR Decoder Based on Perfect Hash Automata and Tuple Structures – SPREAD –
The paper presents the novel design of a one-pass large vocabulary continuous-speech recognition decoder engine, named SPREAD. The decoder is based on a time-synchronous beam-search approach, including statically expande...