Abstract

In recent years, the sentiment analysis using Twitter data is the most prevalent theme in Natural Language Processing (NLP). However, the existing sentiment analysis approaches are having lower performance and accuracy for classification due to the inadequate labeled data and failure to analyze the complex sentences. So, this research develops the novel hybrid machine learning model as Catboost Recurrent Neural Framework (CRNF) with an error pruning mechanism to analyze the Twitter data based on user opinion. Initially, the twitter-based dataset is collected that tweets based on the coronavirus COVID-19 vaccine, which are pre-processed and trained to the system. Furthermore, the proposed CRNF model classifies the sentiments as positive, negative, or neutral. Moreover, the process of sentiment analysis is done through Python and the parameters are calculated. Finally, the attained results in the performance parameters like precision, recall, accuracy and error rate are validated with existing methods.

Highlights

  • Several Artificial Intelligence (AI) [1] techniques are worn in Natural Language Processing (NLP) for many purposes like, sentiment analysis, question and answering system and so on [2]

  • The sentiment analysis is the method of attaining data from numerous sources that are classified based on the sentiments

  • To predict the uniqueness of each sentence, the classification of sentiment measure is more important. This motivate this research to find the scientific solution to enhance twitter data analytics using sentiment analysis in Natural Language Processing to reduce all kinds of issues www.ijacsa.thesai.org

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Summary

INTRODUCTION

Several Artificial Intelligence (AI) [1] techniques are worn in NLP for many purposes like, sentiment analysis, question and answering system and so on [2]. Even it has lot of facilities, the analyses of data in twitter is challenging task because of large volume of data [9]. The present research work aimed to develop an efficient machine learning model to classify tweets data based on their sentiment values.

RELATED WORKS
SYSTEM MODEL AND PROBLEM DEFINATION
PROPOSED CRNF METHODOLOGY
Dataset Description
CRNF Process for Sentiment Analysis
RESULTS AND DISCUSSION
Case Study
Performance Matrics
CONCLUSION
Full Text
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