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  1. Article: Scenario-driven forecasting: modeling peaks and paths. Insights from the COVID-19 pandemic in Belgium.

    Decock, Kristof / Debackere, Koenraad / Vandamme, Anne-Mieke / Van Looy, Bart

    Scientometrics

    2020  Volume 124, Issue 3, Page(s) 2703–2715

    Abstract: The recent 'outburst' of COVID-19 spurred efforts to model and forecast its diffusion patterns, either in terms of infections, people in need of medical assistance (ICU occupation) or casualties. Forecasting patterns and their implied end states remains ... ...

    Abstract The recent 'outburst' of COVID-19 spurred efforts to model and forecast its diffusion patterns, either in terms of infections, people in need of medical assistance (ICU occupation) or casualties. Forecasting patterns and their implied end states remains cumbersome when few (stochastic) data points are available during the early stage of diffusion processes. Extrapolations based on compounded growth rates do not account for inflection points nor end-states. In order to remedy this situation, we advance a set of heuristics which combine forecasting and scenario thinking. Inspired by scenario thinking we allow for a broad range of end states (and their implied growth dynamics, parameters) which are consecutively being assessed in terms of how well they coincide with actual observations. When applying this approach to the diffusion of COVID-19, it becomes clear that combining potential end states with unfolding trajectories provides a better-informed decision space as short term predictions are accurate, while a portfolio of different end states informs the long view. The creation of such a decision space requires temporal distance. Only to the extent that one refrains from incorporating more recent data, more plausible end states become visible. Such dynamic approach also allows one to assess the potential effects of mitigating measures. As such, our contribution implies a plea for dynamically blending forecasting algorithms and scenario-oriented thinking, rather than conceiving them as substitutes or complements.
    Keywords covid19
    Language English
    Publishing date 2020-07-13
    Publishing country Netherlands
    Document type Journal Article
    ZDB-ID 435652-4
    ISSN 0138-9130
    ISSN 0138-9130
    DOI 10.1007/s11192-020-03591-6
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: Scenario-driven forecasting

    Decock, Kristof / Debackere, Koenraad / Vandamme, Anne- Mieke / Van Looy, Bart

    Scientometrics

    modeling peaks and paths. Insights from the COVID-19 pandemic in Belgium

    2020  Volume 124, Issue 3, Page(s) 2703–2715

    Keywords General Social Sciences ; Library and Information Sciences ; Computer Science Applications ; covid19
    Language English
    Publisher Springer Science and Business Media LLC
    Publishing country us
    Document type Article ; Online
    ZDB-ID 435652-4
    ISSN 0138-9130
    ISSN 0138-9130
    DOI 10.1007/s11192-020-03591-6
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  3. Article: Scenario-driven forecasting: modeling peaks and paths. Insights from the COVID-19 pandemic in Belgium

    Decock, Kristof / Debackere, Koenraad / Vandamme, Anne-Mieke / Van Looy, Bart

    Scientometrics

    Abstract: The recent 'outburst' of COVID-19 spurred efforts to model and forecast its diffusion patterns, either in terms of infections, people in need of medical assistance (ICU occupation) or casualties. Forecasting patterns and their implied end states remains ... ...

    Abstract The recent 'outburst' of COVID-19 spurred efforts to model and forecast its diffusion patterns, either in terms of infections, people in need of medical assistance (ICU occupation) or casualties. Forecasting patterns and their implied end states remains cumbersome when few (stochastic) data points are available during the early stage of diffusion processes. Extrapolations based on compounded growth rates do not account for inflection points nor end-states. In order to remedy this situation, we advance a set of heuristics which combine forecasting and scenario thinking. Inspired by scenario thinking we allow for a broad range of end states (and their implied growth dynamics, parameters) which are consecutively being assessed in terms of how well they coincide with actual observations. When applying this approach to the diffusion of COVID-19, it becomes clear that combining potential end states with unfolding trajectories provides a better-informed decision space as short term predictions are accurate, while a portfolio of different end states informs the long view. The creation of such a decision space requires temporal distance. Only to the extent that one refrains from incorporating more recent data, more plausible end states become visible. Such dynamic approach also allows one to assess the potential effects of mitigating measures. As such, our contribution implies a plea for dynamically blending forecasting algorithms and scenario-oriented thinking, rather than conceiving them as substitutes or complements.
    Keywords covid19
    Publisher WHO
    Document type Article
    Note WHO #Covidence: #641236
    Database COVID19

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