O quê
Onde
 

Portugal - € 1.230,00
This outline is provisional and subject to change.

This course teaches analysts how to use SAS/ETS software to diagnose systematic variation in data collected over time, create forecast models to capture the systematic variation, evaluate a given forecast model for goodness-of-fit and accuracy, and forecast future values using the model. Topics include Box-Jenkins ARIMA models, dynamic regression models, and exponential smoothing models.

Learn how to
  • build simple forecast models
  • build advanced forecast models for autocorrelated time series and for time series with trend and seasonality
  • build forecast models that contain explanatory variables
  • build models to assess the impact of events such as public policy changes (for example, DUI laws), sales and marketing promotions, and natural or man-made disasters.
Who should attend Scientists, engineers, and business analysts who have the responsibility of forecasting or evaluating policies and practices for their organizations Formats available Duration
: 6 half day sessions

This outline is provisional and subject to change.

Before attending this course, you should have
  • experience using SAS to enter or transfer data and to perform elementary analyses, such as computing row and column totals and averages, and producing charts and plots. You can gain this experience by completing the
course. * experience in data analysis and statistical modeling. You can gain the prerequisite knowledge by completing the
course. * experience with stationary ARMA models and elementary forecast models like time trend models and exponential smoothing models for forecasting. You can gain this experience by completing the
course.

Knowledge of SAS Macro language programming is useful but not required.

This course addresses SAS/ETS software.

This outline is provisional and subject to change. Introduction to Forecasting
  • time series and forecasting
  • introduction to forecasting with SAS software
  • evaluating forecasts
Stationary Time Series Models
  • introduction to stationary time series
  • automatic model selection techniques for stationary time series
  • estimation and forecasting for stationary time series
Trend Models
  • introduction to nonstationary time series
  • modeling trend
  • alternatives to PROC ARIMA for modeling trend
Seasonal Models
  • seasonal ARIMA models
  • alternatives to PROC ARIMA for fitting seasonal models
  • forecasting the airline passengers data
Models with Explanatory Variables
  • ordinary regression models
  • event models
  • time series regression models
FETS42.
www.sas.com    24 Março
Tweet

Recomende esse curso à um amigo

Enviar para um amigo
Email de seus amigos

Seu nome completo

Sua mensagem

© 2018 Everysearch