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Pregled bibliografske jedinice broj: 1122881

Predicting COVID-19 spread using machine learning algorithms


Žmuk, Berislav; Jošić, Hrvoje
Predicting COVID-19 spread using machine learning algorithms // Contemporary Economic and Business Issues / Drezgić, Saša ; Host, Alen ; Tomljanović, Marko ; Žiković, Saša (ur.).
Rijeka: Ekonomski fakultet Sveučilišta u Rijeci, 2021. str. 233-246 (predavanje, međunarodna recenzija, cjeloviti rad (in extenso), znanstveni)


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Naslov
Predicting COVID-19 spread using machine learning algorithms

Autori
Žmuk, Berislav ; Jošić, Hrvoje

Vrsta, podvrsta i kategorija rada
Radovi u zbornicima skupova, cjeloviti rad (in extenso), znanstveni

Izvornik
Contemporary Economic and Business Issues / Drezgić, Saša ; Host, Alen ; Tomljanović, Marko ; Žiković, Saša - Rijeka : Ekonomski fakultet Sveučilišta u Rijeci, 2021, 233-246

ISBN
978-953-7813-62-8

Skup
International Scientific Conference. "Monetary and Fiscal Policy at the Crossroads''

Mjesto i datum
Rijeka, Hrvatska, 24.06.2020. - 26.06.2020

Vrsta sudjelovanja
Predavanje

Vrsta recenzije
Međunarodna recenzija

Ključne riječi
COVID-19 ; machine learning ; disease spread prediction

Sažetak
COVID-19 was declared as a world health emergency in January 2020. Since then it has affected all aspects of our lives. Countries closed their borders, put their population in self-quarantine and closed businesses and schools. As of March 31, the infection sickened more than 770, 000 people all around the world with thousands of fatalities. There is a little consensus how long will the infection last and what the number of infeced will be. Therefore, it is essential to implement suitable methods for COVID-19 spread prediction which is the goal of this paper. An open source machine learning software Weka and its algorithms (Linear regression, Gaussian Processes, SMOreg and neural network Multilayer Perceptron) have been used to predict the number of cases and fatalities of COVID-19 disease for 10 days in the future. The accuracy of the forecasts is measured using MAPE and RMSE error metrics. The results of the analysis have shown that Weka and its algorithms can be successfully used for prediction of COVID-19 spread in the world. The results of the analysis indicated that the Gaussian processes and Multilayer perceptron neural network are the most precise algorithms for the prediction of new and total cases of COVID-19 disease on a global scale and on an individual country level. The values of MAPE criterion for 12 selected countries, in majority of cases, have shown a highly accurate or good forecasting ability. The results obtained from this analysis can be important for global community and especially for economic and health policy makers in order to guide COVID-19 surveillance and implement public health policy measures.

Izvorni jezik
Engleski

Znanstvena područja
Ekonomija

Napomena
Prilikom objave rada u zborniku radova došlo je do greške u tehničkom oblikovanju
rada te su izbrisane oznake na osima na svim grafičkim prikazima u radu. Stoga je
priložena i ispravljena inačica rada.

ISBN (hard copy) 978-953-7813-62-8
ISBN (on line-version) 978-953-7813-63-5



POVEZANOST RADA


Ustanove:
Ekonomski fakultet, Zagreb

Profili:

Avatar Url Berislav Žmuk (autor)

Avatar Url Hrvoje Jošić (autor)

Citiraj ovu publikaciju:

Žmuk, Berislav; Jošić, Hrvoje
Predicting COVID-19 spread using machine learning algorithms // Contemporary Economic and Business Issues / Drezgić, Saša ; Host, Alen ; Tomljanović, Marko ; Žiković, Saša (ur.).
Rijeka: Ekonomski fakultet Sveučilišta u Rijeci, 2021. str. 233-246 (predavanje, međunarodna recenzija, cjeloviti rad (in extenso), znanstveni)
Žmuk, B. & Jošić, H. (2021) Predicting COVID-19 spread using machine learning algorithms. U: Drezgić, S., Host, A., Tomljanović, M. & Žiković, S. (ur.)Contemporary Economic and Business Issues.
@article{article, author = {\v{Z}muk, Berislav and Jo\v{s}i\'{c}, Hrvoje}, year = {2021}, pages = {233-246}, keywords = {COVID-19, machine learning, disease spread prediction}, isbn = {978-953-7813-62-8}, title = {Predicting COVID-19 spread using machine learning algorithms}, keyword = {COVID-19, machine learning, disease spread prediction}, publisher = {Ekonomski fakultet Sveu\v{c}ili\v{s}ta u Rijeci}, publisherplace = {Rijeka, Hrvatska} }
@article{article, author = {\v{Z}muk, Berislav and Jo\v{s}i\'{c}, Hrvoje}, year = {2021}, pages = {233-246}, keywords = {COVID-19, machine learning, disease spread prediction}, isbn = {978-953-7813-62-8}, title = {Predicting COVID-19 spread using machine learning algorithms}, keyword = {COVID-19, machine learning, disease spread prediction}, publisher = {Ekonomski fakultet Sveu\v{c}ili\v{s}ta u Rijeci}, publisherplace = {Rijeka, Hrvatska} }




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