Forecasting
Reza
Ramezan
Introduction
Examples
STAT 443: Forecasting
Fall 2012
Reza Ramezan rramezan@uwaterloo.ca M3 3144
STAT 443:
Forecasting
Timetable
Reza
Ramezan
Introduction
Examples
The following is a tentative schedule:
Week
Jan. 07
Jan. 14
Jan. 21
Jan. 28
Feb. 04
Feb. 11
Feb. 18
Feb. 25
Mar. 04
Mar. 11
Mar. 18
Mar. 25
Apr. 01
Course Material
Introduction
Regression
Regression
Smoothing / linear processes linear processes
Case study
Reading Week
Box-Jenkins Models
Box-Jenkins / Case study
Algorithms
Algorithms / Forecasting
Forecasting / Case study
ARCH / GARCH models
Deadlines
Assignment 1 (4th Feb.)
Midterm (15th Feb.)
Assignment 2 (15th Mar.)
Assignment 3 (8th Apr.)
STAT 443:
Forecasting
R
Reza
Ramezan
Introduction
Examples
• One of the aims of the course is to become fluent in the
computation associated with forecasting
• In this course R will be the language used for
computation
• Assignments will need coding in R
• In Exams you will be expected to interpret R output
STAT 443:
Forecasting
The Candy Rule
Reza
Ramezan
Introduction
Examples
The candy rule states that:
• If you answer questions about the course material I ask
during lectures, or ask good questions, you get candy.
• If I forget to give you one, you STAND UP FOR IT.
There are no stupid questions to ask. This is a class to learn. If you don’t know it, ask it.
STAT 443:
Forecasting
Forecasting
Reza
Ramezan
Introduction
Examples
• Why forecast?
• Why understand uncertainty of forecast?
• What information to use in forecast?
STAT 443:
Forecasting
Example: Accidental deaths
Reza
Ramezan
Introduction
Examples
• Many examples are time series– forecast what
happens in future
• Example: monthly number of accidental deaths in USA-
1973-79
• Look at structure of data
STAT 443:
Forecasting
Example: Accidental deaths