Visual Analytics based Search-Analyze-Forecast Framework for Epidemiological Time-series Data
Research output: Chapter in Book/Report/Conference proceeding › Conference contribution › peer-review
Standard Standard
IEEE VIS Workshop on Visualization for Pandemic and Emergency Responses 2023 (Vis4PandEmRes). IEEE, 2023.
Research output: Chapter in Book/Report/Conference proceeding › Conference contribution › peer-review
HarvardHarvard
APA
CBE
MLA
VancouverVancouver
Author
RIS
TY - GEN
T1 - Visual Analytics based Search-Analyze-Forecast Framework for Epidemiological Time-series Data
AU - Gönen, Tuna
AU - Xing, Yiwen
AU - Turkay, Cagatay
AU - Abdul-Rahman, Alfie
AU - Jianu, Radu
AU - Fang, Hui
AU - Freeman, Euan
AU - Vidal, Franck
AU - Chen, Min
PY - 2023/10
Y1 - 2023/10
N2 - The COVID-19 pandemic has been a period where time-series of disease statistics, such as the number of cases or vaccinations, have been intensively used by public health professionals to estimate how their region compares to others and estimate what future could look like at home. Conventional visualizations are often limited in terms of advanced comparative features and in supporting forecasting systematically. This paper presents a visual analytics approach to support data-driven prediction based on a search-analyze-predict process comprising a multi-metric, multi-criteria time-series search method and a data-driven prediction technique. These are supported by a visualization framework for the comprehensive comparison of multiple time-series. We inform the design of our approach by getting iterative feedback from public health experts globally, and evaluate it both quantitatively and qualitatively.
AB - The COVID-19 pandemic has been a period where time-series of disease statistics, such as the number of cases or vaccinations, have been intensively used by public health professionals to estimate how their region compares to others and estimate what future could look like at home. Conventional visualizations are often limited in terms of advanced comparative features and in supporting forecasting systematically. This paper presents a visual analytics approach to support data-driven prediction based on a search-analyze-predict process comprising a multi-metric, multi-criteria time-series search method and a data-driven prediction technique. These are supported by a visualization framework for the comprehensive comparison of multiple time-series. We inform the design of our approach by getting iterative feedback from public health experts globally, and evaluate it both quantitatively and qualitatively.
KW - Human-centered computing
KW - Visualization
KW - Visualization techniques
KW - Treemaps
KW - Visualization design and evaluation methods
UR - https://vis4pandemres.github.io/papers/
M3 - Conference contribution
BT - IEEE VIS Workshop on Visualization for Pandemic and Emergency Responses 2023 (Vis4PandEmRes)
PB - IEEE
T2 - IEEE VIS: Visualization & Visual Analytics
Y2 - 22 October 2023 through 27 October 2023
ER -