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Respond to Libor's Email from 2/18 #15
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time period 2010-2016 is fine, but if we can extend a little bit, would be good. E.g. 2008-2018. Note, there was a lot of rating action in 2009 (financial crisis), and in 2016 (oil supply shock from fracking).
you can use S&P ratings for now only, to keep it simple
change in rating - do you mean you have the rating info before change and after the change? Or you know how many notches the rating changed? Clarify
for Altman Z - you can use it, but you can also try to throw the coeffs for A-E into the regression/ML to estimate them
clarify the scope of the analysis: only U.S. public firms; how many UNIQUE FIRMS do you have that had ratings & earnings call data between 2010-2016 (or 2008-2018)? The number of unique firms is the most important sample size info. Then, how many rating changes per firm did we observe over the time frame (histogram). Do we have quarterly/annual earnings calls for all these firms.
Plot other info - bar chart of #of firms by sector, etc.
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