مادة دراسية
Time Series and Forecasting (STAT-436)
List of Topics |
Introduction: Definitions and Examples. trend – seasonality – cyclical |
Transformation: Differences method – Seasonal adjustment. |
Forecasting: How to forecast future - adequacy of a forecast - regression forecasting against time series forecasting |
Some adequacy measures (MAD, MSE, MAPE). |
Decomposition and smoothing of times series: moving averages - exponential smoothing double exponential smoothing. |
Stationary Time Series Models: Auto-Regressive processes (AR(1), AR(2), AR(p)), Moving Average processes (MA(1), MA(2), MA(q)), The mixed Autoregressive-Moving Average Model ARMA(p,q). |
Forecasting: Minimum Mean Square Error Forecasts for ARMA and ARIMA models. |
Forecasting, prediction limits and updating forecasts. |
ARIMA(p,d,q) models: Autocorrelation and partial autocorrelation functions - identification of appropriate model |
Fitting models to real and simulated data sets. Diagnostic checks on the residuals. |
Case studies: training on how to analyze real life data sets using the statistical package MINITAB - write reports. |