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日期:2019-04-30 10:19

ECMT 674: Economic Forecasting

Final Research Paper; Due Date: April 29, 2019 (end of the day, i.e. 11:59pm)

This is a team assignment that could be conducted in teams of at most two. Please mark every person’s

name on the document that is being returned. I would also like to get the signatures of every team member

under a statement: “I have contributed to this assignment to a sufficient degree to get equal credit with

my teammates, and all other collaborations are properly acknowledged.” Please submit the files through

eCampus. Everyone in the team will receive the same grade.

You will need R/RStudio to complete this assignment. You could also use Excel to do the data work for

the assignment. I would like you to turn in one file containing the content of the report as well as figures and

tables. Throughout the semester you have used R Markdown to generate the reports, and you should do the

same in this assignment as well. Please name your files in an informative manner: an example would be the

course name/number + the first initials of the team members + the assignment number + a file identifier.

In this assignment you will be looking at GDP growth forecasts and recession probabilities using the

information in the US yield curve. Some useful references for the project are below. The list is not limited

to the references below, there are many papers about this topic. Some of the references within these links

could be useful as well (some of the articles below are available for reading only if you are connected to the

university network):

the Cleveland Fed at

https://www.clevelandfed.org/our-research/indicators-and-data/yield-curve-and-gdpgrowth.aspx

the San Francisco Fed at

https://www.frbsf.org/economic-research/publications/economic-letter/2018/august/inf

ormation-in-yield-curve-about-future-recessions/

the Journal of Finance at

http://www.jstor.org/stable/pdf/2328836.pdf?refreqid=excelsior:5a689814d6f94399d93a

c94641339695

the Journal of Applied Econometrics at

https://onlinelibrary.wiley.com/doi/full/10.1002/jae.2485

There are also various news media articles on the flattening of the yield curve and its implications for a

recession in the US. Consider recent articles in Bloomberg and Forbes: (i) https://www.bloomberg.com/ne

ws/articles/2018-04-09/yield-curve-entering-danger-zone-as-inversion-reappears-on-radar;

(ii) https://www.forbes.com/sites/simonmoore/2019/03/23/the-yield-curve-just-inverted-put

ting-the-chance-of-a-recession-at-30/#312c122413ab, among others.

The overall objective of this project is to evaluate how well the slope of the yield curve predicts changes

in real output growth, and consequently, how well it forecasts recessions. The literature has taken different

approaches to it: (i) you can forecast the GDP growth and its forecast distribution, figure out the probability

associated with negative GDP growth. Ideally, you would like to figure out the probability associated with

two consecutive quarter negative GDP growth. (ii) You can model the probabilities directly, by defining the

recessions consistent with the definition used by the National Bureau of Economic Research (NBER, for a

reference see https://www.nber.org/cycles/main.html). The idea here is that the recession probabilities

are directly predicted by the spread. Either approach would be acceptable.

1

Your analysis should touch on model selection, proper transformation of the variables, include some discussion

on how the proper transformation is selected. It should include an out-of-sample forecast evaluation

exercise. You can experiment with various spreads as well as various estimation schemes, i.e. fixed, rolling,

recursive forecasting. Given the references for the assignment and what you have learned from the current

project (and perhaps homework 4), you should provide your insights on how good the yield curve is for

predicting recessions.

The paper should not be more than 15 pages long and should use reasonable font size, spacing and

margins. The text should be at most 5 pages, the rest can be allocated to figures and tables.

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