Forecasting
The basic ingredient of any demand plan is a statistical forecast.
Statistical models and resulting forecasts are the building blocks
of the planning process.
Although consensus and collaboration are key ingredients of a successful
demand management program, statistical forecasting is the first-step
to create the baseline plan. To this end, a good process and software
technologies become important. One of the key things you look for
when you prepare a Request for Proposal (RFP) is to ensure that
you cover all of the modeling algorithms and techniques which are
relevant for your process. This depends on your industry and your
specific business model.
Forecasting techniques can be broadly classified as:
- Time Series Forecasting models
consisting of exponential smoothing, Holt-Winters Multiplicative
Smoothing, ARIMA models and Box-Jenkins Models, Logarithmic regression
models
- Promotional Planning
Models that typically use event modeling methodologies and indicator
variable models
- Causal models that include
a variety of Multiple Linear Regression Models and transfer function
models
- Probabilistic Models that often forecast the probability of
a particular event happening in the future and these include Logit,
Probit and Tobit models
- Croston's Models to forecast intermittent demand. Here is a
link to a semi-technical
explanation of Croston's Method