Information quantifiers and unpredictability in the COVID-19 time-series data

 

Đã lưu trong:
Chi tiết về thư mục
Nhiều tác giả: Vampa, Victoria, Kowalski, Andrés M., Losada, Marcelo, Portesi, Mariela, Holik, Federico
Định dạng: artículo original
Trạng thái:Versión publicada
Ngày xuất bản:2023
Miêu tả:We apply different information quantifiers to the study of COVID-19 time series. First, we analyze how the fact of smoothing the curves alters the informational content of the series, by applying the permutation and wavelet entropies to the series of daily new cases using a sliding-window method. In addition, to study how coupled the curves associated with daily new cases of infections and deaths are, we compute the wavelet coherence. Our results show how information quantifiers can be used to analyze the unpredictable behavior of this pandemic in the short and medium terms.
Quốc gia:Portal de Revistas UCR
Tổ chức giáo dục:Universidad de Costa Rica
Repositorio:Portal de Revistas UCR
Ngôn ngữ:Inglés
OAI Identifier:oai:archivo.portal.ucr.ac.cr:article/50554
Truy cập trực tuyến:https://archivo.revistas.ucr.ac.cr/index.php/matematica/article/view/50554
Từ khóa:Teoría de la información
Entropía de permutaciones
Complejidad estadística
Metodología de Bandt-Pompe
Transformada Wavelet
Information theory
Permutation entropy
Statistical complexity
Bandt-Pompe methodology
Wavelet transform