VoseTimeSME2Perc

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VoseTimeSME2Perc({Percentiles1}, {Percentiles2}, P1, P2, CorrelationFactor, NegativeAllowed)image1094.gif

 

 

 

Time series function modeling a variable estimated for each period by a lower and upper percentile.

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Explanation and Uses

The SME2Perc time series function provides an easy, subjective way to specify a time series with some key features:

Growth and spread over time can be controlled by changing the {Percentiles1} and {Percentiles2} array values. P1 and P2 would most commonly be set at {0.2, 0.8}, {0.1, 0.9} or {0.05, 0.95} reflecting 1 in 5, 1 in 10 and 1 in 20 probabilities respectively, which are probabilities that people can realistically understand. Avoid values like {0.01, 0.99} or more extreme if possible, because human beings are not that great at appreciating and estimating probabilities with that level of precision.

Correlation between periods can be specified with a single parameter. The level of correlation is best selected by reviewing the example pathways that are generated in the interface each time one clicks the Generate button. Look at the range of variation from one period to the next across the entire series and adjust the CorrelationFactor until it looks reasonable. If you believe that there is correlation across the series you will likely settle on a value above 0.4 since lower levels of correlation are not immediately obvious to the eye. You will want to use correlation, for example, when the variable being forecast will tend to be high in each year if it is high in the first year: for example, a forecast of sales of a new product, when it either takes off because it is appealing to potential clients, or doesn’t; or the use of a new vaccine where people are generally convinced of its value, or not.