Інформаційна система для оцінювання інформативності ознак епідемічного процесу

The primary objective of this study is to assess the informativeness of various parameters influencing epidemic processes utilizing the Shannon and Kullback–Leibler methods. These methods were selected based on their foundation in the principles of information theory and their extensive application...

Повний опис

Збережено в:
Бібліографічні деталі
Видавець:The National Technical University of Ukraine "Igor Sikorsky Kyiv Polytechnic Institute"
Дата:2023
Автори: Bazilevych, Kseniia, Kyrylenko, Olena, Parfenyuk, Yurii, Yakovlev, Sergiy, Krivtsov, Serhii, Meniailov, Ievgen, Kuznietcova, Victoriya, Chumachenko, Dmytro
Формат: Стаття
Мова:English
Опубліковано: The National Technical University of Ukraine "Igor Sikorsky Kyiv Polytechnic Institute" 2023
Теми:
Онлайн доступ:http://journal.iasa.kpi.ua/article/view/297411
Теги: Додати тег
Немає тегів, Будьте першим, хто поставить тег для цього запису!

Організація

System research and information technologies
Опис
Резюме:The primary objective of this study is to assess the informativeness of various parameters influencing epidemic processes utilizing the Shannon and Kullback–Leibler methods. These methods were selected based on their foundation in the principles of information theory and their extensive application in machine learning, statistics, and other relevant domains. A comparative analysis was performed between the results acquired from both methods, and an information system was designed to facilitate the uploading of data samples and the calculation of factor informativeness impacting the epidemic processes. The findings revealed that certain features, such as “Chronic lung disease,” “Chronic kidney disease,” and “Weakened immunity,” did not carry significant information for further analysis and hindered the forecasting process, as per the data set examined. The developed information system efficiently supports the assessment of feature informativeness, thereby aiding in the comprehensive analysis of epidemic processes and enabling the visualization of the results. This study contributes to the current body of knowledge by providing specific examples of applying the described algorithmic models, comparing various methods and their outcomes, and developing a supportive tool for analyzing epidemic processes.