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Forecasting Methods

isaacmg edited this page Jul 22, 2020 · 8 revisions

Summary Overview

There are several different methods we can use for forecasting each with its own pros/cons.

New cases

Providing the number of new cases expected for a given time period is important with respect to monitoring pandemic growth and tracking the pandemic.

Method Pros Cons
New cases (raw)
  • High granularity: In theory this would tell public officials exactly what days diagnosis will occur
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    New cases 7 day rolling average
  • Removes the noise associated with reporting delays in data.
  • Easier to see if model is learning disease trajectories
  • Hard to forecast for non-stationary data and predict out of distribution events
  • New cases difference
  • Still high granularity
  • Works better on non-stationary data
  • 7 day rolling average difference
  • Removes the noise associated with reporting delays.
  • Helps solve non-stationary data problems
  • Less intuitive and comparable to other models
  • Errors will compound
  • Hospitalizations

    Forecasting the number of hospitalization helps with planning hospital staffing resources and monitoring how dire the situation. This is probably of greater utility to hospital officials than raw case numbers.

    Method Pros Cons
    New hospitalizations (raw)
  • High granularity: In theory tell public officials exactly what days diagnosis will occur
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    Total active hospitalizations
  • Removes the noise associated with reporting delays.
  • Easier to see if model is learning disease trajectories
  • Hard to forecast for non-stationary data and predict out of distribution events
  • Hospitalizations difference
  • Still high granularity
  • Works better on non-stationary data
  • Active ICU admission
  • Still high granularity
  • Works better on non-stationary data
  • ICU Beds

    Analysis