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    • ADCAIJ: Advances in Distributed Computing and Artificial Intelligence Journal
    • ADCAIJ - 2022
    • ADCAIJ, Vol.11, n.1
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    •   Gredos Principal
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    • ADCAIJ: Advances in Distributed Computing and Artificial Intelligence Journal
    • ADCAIJ - 2022
    • ADCAIJ, Vol.11, n.1
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    Título
    Analysis of sentiments on the onset of Covid-19 using Machine Learning Techniques
    Autor(es)
    Arya, Vishakha
    Mishra, Amit Kumar Mishra
    González Briones, AlfonsoAutoridad USAL ORCID
    Palabras clave
    sentiment analysis
    machine learning
    COVID-19
    TF-IDF
    Linear SVC
    NLTK
    GBM
    random forest
    Fecha de publicación
    2022-06-06
    Editor
    Ediciones Universidad de Salamanca (España)
    Citación
    ADCAIJ: Advances in Distributed Computing and Artificial Intelligence Journal, 11 (2022)
    Resumen
    The novel coronavirus (Covid-19) pandemic has struck the whole world and is one of the most striking topics on social media platforms. Sentiment outbreak on social media enduring various thoughts, opinions, and emotions about the Covid-19 disease, expressing views they are feeling presently. Analyzing sentiments helps to yield better results. Gathering data from different blogging sites like Facebook, Twitter, Weibo, YouTube, Instagram, etc., and Twitter is the largest repository. Videos, text, and audio were also collected from repositories. Sentiment analysis uses opinion mining to acquire the sentiments of its users and categorizes them accordingly as positive, negative, and neutral. Analytical and machine learning classification is implemented to 3586 tweets collected in different time frames. In this paper, sentiment analysis was performed on tweets accumulated during the Covid-19 pandemic, Coronavirus disease. Tweets are collected from the Twitter database using Hydrator a web-based application. Data-preprocessing removes all the noise, outliers from the raw data. With Natural Language Toolkit (NLTK), text classification for sentiment analysis and calculate the score subjective polarity, counts, and sentiment distribution. N-gram is used in textual mining -and Natural Language Processing for a continuous sequence of words in a text or document applying uni-gram, bi-gram, and tri-gram for statistical computation. Term frequency and Inverse document frequency (TF-IDF) is a feature extraction technique that converts textual data into numeric form. Vectorize data feed to our model to obtain insights from linguistic data. Linear SVC, MultinomialNB, GBM, and Random Forest classifier with Tfidf classification model applied to our proposed model. Linear Support Vector classification performs better than the other two classifiers. Results depict that RF performs better./n
    URI
    https://hdl.handle.net/10366/150221
    ISSN
    2255-2863
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    • ADCAIJ, Vol.11, n.1 [10]
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