Abstract
Forecasting methods are notoriously difficult to interpret, particularly when the relationship between the data and the resulting forecasts is not obvious. Interpretability is an important property of a forecasting method because it allows the user to complement the forecasts with their own knowledge, a process which leads to more applicable results. In general, mechanistic methods are more interpretable than non-mechanistic methods, but they require explicit knowledge of the underlying dynamics. In this paper, we introduce EpiForecast, a tool which performs interpretable, non-mechanistic forecasts using interactive visualization and a simple, data-focused forecasting technique based on empirical dynamic modelling. EpiForecast’s primary feature is a four-plot interactive dashboard which displays a variety of information to help the user understand how the forecasts are generated. In addition to point forecasts, the tool produces distributional forecasts using a kernel density estimation method–these are visualized using color gradients to produce a quick, intuitive visual summary of the estimated future. To ensure the work is FAIR and privacy is ensured, we have released the tool as an entirely in-browser web-application.
Publisher
Public Library of Science (PLoS)
Reference34 articles.
1. Some observations on forecasting and policy;JH Wright;Int J Forecast,2019
2. The need for a complex systems model of evidence for public health;H Rutter;The Lancet,2017
3. Thinking fast and slow in disaster decision-making with Smart City Digital Twins;N Mohammadi;Nat Comput Sci,2021
4. Modeling human behavior in economics and social science;M Dolfin;Phys Life Rev,2017
5. Online arima algorithms for time series prediction;C Liu;In: Thirtieth AAAI conference on artificial intelligence,2016