Concept explainers
Monitor the forecast in Problem 12.23 for bias using a tracking signal and a control chart with ±3 MAD. Does there appear to be any bias in the forecast?
Temco Industries has developed a
Measure the accuracy of the forecast using MAD, MAPD, and cumulative error. Does the forecast method appear to be accurate?
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