What-if Wednesday: Seasonal Model Forecasting with Seasonal Methods

Seasonal method is a regression method that fits a linear trend along with sine and cosine curves. These sine and cosine portions of the regression can fit any seasonal deviations from the linear trend. Robust seasonal method also fits a trend along with sine and cosine curves, however this method uses linear programming to fit a seasonal series in a way that compared to the regular seasonal method is less likely to be thrown off by noisy values that depart from the trend or seasonality.

By |2019-04-13T23:09:23-04:00July 5th, 2017|Forecasting|

How Does a Demand Forecast of Zero Impact Your Forecast Accuracy?

For most businesses that rely on demand forecasts for supply and capacity planning, improving demand forecast accuracy is critical. There are many methods to measure forecast bias and the accuracy of supply chain forecasts including using statistical methods like the Mean Absolute Percent Error or MAPE that we’ve discussed in our previous blogs.

By |2021-08-30T10:58:16-04:00June 20th, 2017|Forecast Accuracy, Forecasting, Supply Chain|

Demand Forecasting: The Art and Science That Keeps You Guessing

“It is said that the present is pregnant with the future” – Voltaire Forecasting, therefore, is an attempt to deduce the future from the present. It is both, art and science. We will explore the practice of forecasting demand in the short to medium term. Within the constraints of economic and technology trends, demand forecasting drives the planning process in most businesses.

By |2019-04-13T23:09:27-04:00May 3rd, 2017|Forecasting|

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