Forecasting COVID-19 cases using time series modeling and association rule mining

被引:0
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作者
Rachasak Somyanonthanakul
Kritsasith Warin
Watchara Amasiri
Karicha Mairiang
Chatchai Mingmalairak
Wararit Panichkitkosolkul
Krittin Silanun
Thanaruk Theeramunkong
Surapon Nitikraipot
Siriwan Suebnukarn
机构
[1] Rangsit University,College of Digital Innovation Technology
[2] Thammasat University,Faculty of Dentistry
[3] Thammasat University,Faculty of Engineering
[4] Thammasat University,Faculty of Medicine
[5] Thammasat University,Faculty of Science and Technology
[6] Thammasat University,Sirindhorn International Institute of Technology
[7] Academy of Science,Research and Innovation Division
[8] Royal Society of Thailand,undefined
[9] Sanam Sueapa,undefined
[10] Thammasat University Hospital,undefined
[11] Thammasat University,undefined
关键词
COVID 19; Pandemic; Data mining; Time series analysis; Association rule mining;
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