Questions
Single choice
Which of the following forecasting methods requires the least amount of past data to produce a forecast for the next period?
Options
A.Exponential smoothing without trend
B.Naïve method
C.Double exponential smoothing
D.Moving average
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Step-by-Step Analysis
In forecasting, the amount of past data required varies by method, and some approaches can generate a forecast with minimal historical data.
Option 1: Exponential smoothing without trend. This method relies on a weighted average of past observations, typically needing multiple prior periods to initialize and produce a ......Login to view full explanationLog in for full answers
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