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Sentiment Analysis of Covid-19 Tweets Using Machine Learning Algorithm
Details
Main theme: This article demonstrates that, among a large number of prediction models, the Facebook Prophet Model had the highest accuracy when it came to anticipating pandemic circumstances.Result Analysis: They presented how the models performed on the test sets using the regression and time series models, as well as the analysis using Facebook Prophet. They can calculate the Root Mean Square Error (RMSE) for each model using these results. The comparison of the models based on their RMSE scores is shown in Table I. Table I indicates that when forecasting confirmed instances, the FPM has the lowest average error. Second place goes to the ARIMA model, which is followed by the AR and MA models. However, because the ARIMA incorporates both the MA and AR models, they are not taken into account.The HWA model, which comes after these two, has the lowest score, followed by the PR. Table I shows that the findings are almost identical to the table confirmed cases results, with the FPM coming out on top, followed by the ARIMA, HWA, and PR, in that order. As a result, they come to the conclusion that the best models for anticipating the pandemic situation are as follows: Facebook.
Autorentext
I am Ahmed Rasidun Bari Dip, currently working as a software engineer in a software company.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09786208118105
- Genre Maths
- Anzahl Seiten 52
- Herausgeber LAP LAMBERT Academic Publishing
- Größe H220mm x B150mm x T4mm
- Jahr 2024
- EAN 9786208118105
- Format Kartonierter Einband
- ISBN 6208118107
- Veröffentlichung 30.12.2024
- Titel Sentiment Analysis of Covid-19 Tweets Using Machine Learning Algorithm
- Autor Ahmed Rasidun Bari Dip , Md. Shihab Sadik , Omi Evance Rozario
- Untertitel DE
- Gewicht 96g
- Sprache Englisch