Title: Economic Forecasting Seminar
1Economic Forecasting Seminar
- Exploratory Data Analysis
- Your First Forecast
2The First Steps
- Oral Presentations
- Written Reports
- Tools Techniques for an exploratory analysis of
your data for the purposes of modeling and
forecasting
3Oral Presentations
- Four Parts
- Introduction You your audience
- Overview Tell em what youre going to say
- Important Features of your Analysis Say it
- Conclusions Tell em what you said
4Oral Presentation Introduction
- Your name
- Who you are speaking to. Examples Board of
Directors of Enron the Forecasting Team for the
Energy Division of Charles River Associates the
Marketing Division of AFLAC. - Why are you here?
5Oral Presentations Helpful Hints
- PowerPoint useful for organizing your talk and
communicating lots of information in a succinct
fashion. - Try to have eye contact with your audience, not
your slides. - Avoid distracting gimmicks and mannerisms.
- Practice your talk before you present it. Your
goal for this class should be a 7 minute
presentation.
6Oral Presentations More Hints
- Dont include too much text on any one slide.
More than two sentences per bullet / more than 4
or 5 bullets per slide is too much. - Use charts and simple tables.
- Think about format use color for important
features/data. Consider the number of decimal
places implications on accuracy. - Know your audience. Dont assume a lot of
technical expertise.
7Oral Presentations Overview
- Key features of your data time range prominent
features (e.g., strong trend seasonality). - Brief summary of the methods of your
analysis/forecast. - One or two key results hints as to the forecast.
8Oral Presentations Important Features of Your
Analysis
- Decompose your series. Whats the single most
important feature? - Consider the presence of outliers or
irregularities. - Describe your forecasting method in your own
words. - Illustrate how you applied this technique and
your choice of model. - Assessment of accuracy or your method.
9Oral Presentations Conclusions
- Present your forecast in an appropriate context
(e.g., recent trends). - Review of your presentation.
- Linchpin assumptions or key factors on which
your forecast depends. - What role did your judgment play in this
forecast? - Email me your PowerPoint presentation no later
than 1 hour before class.
10Written Report
- 1 to 2 pages in length, including charts
tables. - May include a technical appendix of any length.
- Should mirror your oral report in terms of
content.
11Written Report Format
- 12 point text minimum. 1 inch margins on all
sides. - Section headers in bold.
- Charts with wrap-around text help tell your
message. Think about the context of your charts. - Think about the informational content of the
headers in your report.
12Written Report Overview
- Provides an Executive Summary of your entire
report, including a teaser about the results. - Data Analysis section illustrates key features
of your data. Decomposition of your series and
one or two key features.
13Written Report Forecast Method
- Describes succinctly and in your own words the
forecast method you have used and the model you
chose. - Apply selection criteria in a logical fashion.
- Provide an ex post assessment of accuracy.
14Written Report Forecast
- Ex ante forecast.
- Level and/or rates of growth terms depending on
the context of your story. - Anything interesting about your forecast?
15Written Report Conclusions
- Same as for the oral reports.
- What are the linchpin assumptions?
- What judgmental adjustments would you make to the
models unadjusted forecast (if any)?
16Tools for Exploratory Data Analysis
- Graphs give them a title and identify the
units. - Consider using gridlines to help identify levels.
- Consider labels for important points/features.
- Consider subsets of the data.
- Report summary statistics
- Calculate rates of growth
17Evaluating Forecast Accuracy
- Involves calculating forecast errors and
modifying your methods. - Several criteria exist which can be used to
assess the adequacy/accuracy of the method you
choose.
Ex post simulation "Historical Simulation"
Ex post forecast
Ex ante forecast
Backcasting
Time, t
Estimation period
T3 (Last Observation)
T1
T2
18Ex Post Forecasting
- Withhold 12 observations from the end of your
sample (T3-T2). - Estimate your model (T2-T1).
- Forecast the observations you withheld.
- Calculate summary statistics for the resulting
forecast errors.
19Mean Error
- A measure of bias in the forecast.
20Mean Absolute Error
21Mean Absolute Percentage Error
22Mean Squared Error
23Root Mean Squared Error
24Assignment Your First Forecast
- Forecast Method Linear trend projection.
- Select a regression model for your series.
- Use only a linear trend seasonal dummy
variables and/or a recession dummy as candidate
explanatory variables. - Forecast your series through 200812.
- Evaluate the forecast.