Forecasting with Limited Data - a Practical Approach
The focus is on the theoretical construct of time-series data mining with a special emphasis on dimension reduction and similarity analysis in support of time-series clustering. It also coalesces the data mining techniques and panel series analyses by presenting an application designed to formulate introductory distributions and life-cycle curves for new or retiring products, markets, and services.
Learn how to incorporate a structured judgmental approach for
- analyzing time series
- generating forecasts in support of practical applications.
Who should attend: Professional forecasters and business analysts who need to forecast products or services with little history or products and services that are near the end of their life cycles
This page was created using SAS software.

