The Model of Regularization Coefficient in Polynomial Regression for Modelling the Spread of COVID-19 in Romania
23rd International Carpathian Control Conference, ICCC 2022
; : 94-100, 2022.
Article
in English
| Scopus | ID: covidwho-1961391
ABSTRACT
Research on the pandemic situation of COVID-19 is very important for delivering detailed risk analyzes based on estimating the peak of the pandemic. The machine learning approach has a major role to play in predicting the number of COVID-19 cases. Most research on COVID-19 uses polynomial regression for analysis. When a regression model is build, often, the model fails to generalize on unseen data. For instance, the model might end up becoming too complex, having significantly high variance due to over-fitting, thereby impacting the model performance on new data sets. To avoid over-fitting of the polynomial regression, a regularization method can be used to suppress the coefficients of the higher order polynomial, a principle that allows the smoothness of the regression function. The aim of this paper is to formulate a mathematical model for regularization coefficient in polynomial regression and evaluate this approach to enable obtaining meaningful results on a COVID-19 data set. Therefore we believe that our results will contribute to a better understanding of the over-fitting process in polynomial regression. Our methodology consists of following major steps:
i) optimizing the model using k-fold cross-validation for finding an optimal regularization coefficient and ii) comparing the performance of ridge regression and lasso regression using accuracy metrics. Moreover, our approach could also have a potential impact in machine learning education, regarding the understanding of the underlying mathematical machinery behind polynomial regression algorithms. The obtained results show that the polynomial model built using lasso regression, outperforms the ridge regression. © 2022 IEEE.
COVID-19; polynomial curve fitting; regression; regularization; Curve fitting; Machine learning; Machinery; Polynomial approximation; Regression analysis; Risk perception; Data set; Lasso regressions; Overfitting; Polynomial regression; Regularisation; Regularization coefficients; Ridge regression; Romania
Full text:
Available
Collection:
Databases of international organizations
Database:
Scopus
Type of study:
Experimental Studies
/
Prognostic study
/
Randomized controlled trials
Language:
English
Journal:
23rd International Carpathian Control Conference, ICCC 2022
Year:
2022
Document Type:
Article
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