Machine Learning Model for Predicting Epidemics

被引:1
|
作者
Bokonda, Patrick Loola [1 ]
Sidibe, Moussa [2 ]
Souissi, Nissrine [3 ]
Ouazzani-Touhami, Khadija [3 ]
机构
[1] Mohammed V Univ Rabat, Mohammadia Sch Engineers EMI, SiWeb Team, Rabat 10000, Morocco
[2] Univ Paris Cite, Digital Sci, F-75013 Paris, France
[3] Rabat Natl Higher Sch Mines ENSMR, Syst Engn & Digital Transformat Lab LISTD, Rabat 53000, Morocco
关键词
epidemic; prediction; classification; machine learning; COVID-19; random forests; metrics; dataset; COVID-19;
D O I
10.3390/computers12030054
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
COVID-19 has raised the issue of fighting epidemics. We were able to realize that in this fight, countering the spread of the disease was the main goal and we propose to contribute to it. To achieve this, we propose an enriched model of Random Forest (RF) that we called RF EP (EP for Epidemiological Prediction). RF is based on the Forest RI algorithm, proposed by Leo Breiman. Our model (RF EP) is based on a modified version of Forest RI that we called Forest EP. Operations added on Forest RI to obtain Forest EP are as follows: the selection of significant variables, the standardization of data, the reduction in dimensions, and finally the selection of new variables that best synthesize information the algorithm needs. This study uses a data set designed for classification studies to predict whether a patient is suffering from COVID-19 based on the following 11 variables: Country, Age, Fever, Bodypain, Runny_nose, Difficult_in_breathing, Nasal_congestion, Sore_throat, Gender, Severity, and Contact_with_covid_patient. We compared default RF to five other machine learning models: GNB, LR, SVM, KNN, and DT. RF proved to be the best classifier of all with the following metrics: Accuracy (94.9%), Precision (94.0%), Recall (96.6%), and F1 Score (95.2%). Our model, RF EP, produced the following metrics: Accuracy (94.9%), Precision (93.1%), Recall (97.7%), and F1 Score (95.3%). The performance gain by RF EP on the Recall metric compared to default RF allowed us to propose a new model with a better score than default RF in the limitation of the virus propagation on the dataset used in this study.
引用
收藏
页数:19
相关论文
共 50 条
  • [1] Predicting malaria epidemics in Burkina Faso with machine learning
    Harvey, David
    Valkenburg, Wessel
    Amara, Amara
    [J]. PLOS ONE, 2021, 16 (06):
  • [2] Machine learning model selection for predicting bathymetry
    Moran, Nicholas
    Stringer, Ben
    Lin, Bruce
    Hoque, Md Tamjidul
    [J]. DEEP-SEA RESEARCH PART I-OCEANOGRAPHIC RESEARCH PAPERS, 2022, 185
  • [3] Predicting and Preventing Malware in Machine Learning Model
    Nisha, D.
    Sivaraman, E.
    Honnavalli, Prasad B.
    [J]. 2019 10TH INTERNATIONAL CONFERENCE ON COMPUTING, COMMUNICATION AND NETWORKING TECHNOLOGIES (ICCCNT), 2019,
  • [4] Optimized Machine Learning Model for Predicting Groundwater Contamination
    Mazumdar, Hirak
    Murphy, Michael P.
    Bhatkande, Shilpa
    Emerson, Hilary P.
    Kaplan, Daniel, I
    Gohel, Hardik A.
    [J]. 2022 IEEE METROCON, 2022, : 16 - 18
  • [5] Predicting nucleation using machine learning in the Ising model
    Huang, Shan
    Klein, William
    Gould, Harvey
    [J]. PHYSICAL REVIEW E, 2021, 103 (03)
  • [6] Predicting Chemical Reaction Barriers with a Machine Learning Model
    Singh, Aayush R.
    Rohr, Brian A.
    Gauthier, Joseph A.
    Norskov, Jens K.
    [J]. CATALYSIS LETTERS, 2019, 149 (09) : 2347 - 2354
  • [7] Machine Learning Regression Model for Predicting Honey Harvests
    Campbell, Tristan
    Dixon, Kingsley W.
    Dods, Kenneth
    Fearns, Peter
    Handcock, Rebecca
    [J]. AGRICULTURE-BASEL, 2020, 10 (04):
  • [8] Machine Learning Model for Predicting Evaporation Losses in Reservoirs
    Abreu, A. L. E.
    Chaves Neto, A.
    [J]. IEEE LATIN AMERICA TRANSACTIONS, 2018, 16 (07) : 2040 - 2044
  • [9] Predicting Chemical Reaction Barriers with a Machine Learning Model
    Aayush R. Singh
    Brian A. Rohr
    Joseph A. Gauthier
    Jens K. Nørskov
    [J]. Catalysis Letters, 2019, 149 : 2347 - 2354
  • [10] Predicting the Single Diode Model Parameters using Machine Learning Model
    Inbamani, Abinaya
    Prabha, S. U.
    [J]. ELECTRIC POWER COMPONENTS AND SYSTEMS, 2023, 51 (14) : 1385 - 1397