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Automated Pipeline for Continual Data Gathering and Retraining of the Machine Learning-Based COVID-19 Spread Models (CROSBI ID 294344)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Baressi Šegota, Sandi ; Lorencin, Ivan ; Anđelić, Nikola ; Štifanić, Daniel ; Musulin, Jelena ; Vlahinić, Saša ; Šušteršič, Tijana ; Blagojević, Anđela ; Car, Zlatan Automated Pipeline for Continual Data Gathering and Retraining of the Machine Learning-Based COVID-19 Spread Models // EAI endorsed transactions on bioengineering and bioinformatics, 21 (2021), 3; e2, 9. doi: 10.4108/eai.4-5-2021.169582

Podaci o odgovornosti

Baressi Šegota, Sandi ; Lorencin, Ivan ; Anđelić, Nikola ; Štifanić, Daniel ; Musulin, Jelena ; Vlahinić, Saša ; Šušteršič, Tijana ; Blagojević, Anđela ; Car, Zlatan

engleski

Automated Pipeline for Continual Data Gathering and Retraining of the Machine Learning-Based COVID-19 Spread Models

INTRODUCTION: The development of epidemiological curve models is one of the key factors in the combat of epidemiological diseases such as COVID-19. OBJECTIVES: The goal of this paper is to develop a system for automatic training and testing of AI-based regressive models of epidemiological curves using public data, which involves automating the data acquisition and speeding up the training of the models. METHODS: The research applies Multilayer Perceptron (MLP) for the creation of models, implemented within a system for automatic data fetching and training, and evaluated using the coefficient of determination (R2). Training time is lowered through the application of data filtering and simplifying the model selection. RESULTS: The developed system can train high precision models rapidly, allowing for quick model delivery All trained models achieve scores which are higher than 0.95. CONCLUSION: The results show that the development of a quick COVID-19 spread modeling system is possible.

artificial intelligence ; bio-engineering ; bio-inspired systems ; bio-inspired models ; COVID-19 ; epidemiology curves ; machine learning ; multilayer perceptron

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Podaci o izdanju

21 (3)

2021.

e2

9

objavljeno

2709-4111

10.4108/eai.4-5-2021.169582

Povezanost rada

Biotehnologija, Elektrotehnika, Javno zdravstvo i zdravstvena zaštita, Računarstvo, Temeljne tehničke znanosti

Poveznice