Some Initiatives in a Business Forecasting Course


Authors: 
Singfat Chu
Volume: 
15 (2)
Pages: 
online
Year: 
2007
Publisher: 
Journal of Statistics Education
URL: 
http://www.amstat.org/publications/jse/v15n2/chu.html
Abstract: 

The paper reports some initiatives to freshen up the typical undergraduate business forecasting course. These include (1) students doing research and presentations on contemporary tools and industry practices such as neural networks and collaborative forecasting (2) insertion of Logistic Regression in the curriculum (3) productive use of applets available on the Internet to convey abstract concepts underlying ARIMA models and (4) showcasing forecasting tools in timely or familiar applications. These initiatives align with the best practices framed across the "Making Statistics More Effective in Schools of Business" (MSMESB) conferences. Course experiences and student feedback are also discussed.

The CAUSE Research Group is supported in part by a member initiative grant from the American Statistical Association’s Section on Statistics and Data Science Education