For the purposes of this question, I would like to construct a data frame or similar to be able to "stack rank" and sort various metrics that are generated from functions.
Let's take an example from the
Performance Analytics package:
- I have the close-close returns of 3 indices from 2001: SPX, NASDAQ (CCMP) and EuroStoxx (SX5E).
- I'd like to get the 95% 1day VaR for each of these, place them into a table and then sort them from high to low (or low to high etc).
To illustrate my question, I will use the
table.DownsideRisk function in the
Performance Analytics package rather than just calling
So, I can get these results individually:
SPX.cc Semi Deviation 0.0095 Gain Deviation 0.0096 Loss Deviation 0.0102 Downside Deviation (MAR=210%) 0.0142 Downside Deviation (Rf=0%) 0.0094 Downside Deviation (0%) 0.0094 Maximum Drawdown 0.5678 Historical VaR (95%) -0.0203 Historical ES (95%) -0.0317 Modified VaR (95%) -0.0193 Modified ES (95%) -0.0273
Or I can place them all in an
xts object together and then run
SPX.cc CCMP.cc SX5E.cc Semi Deviation 0.0095 0.0114 0.0111 Gain Deviation 0.0096 0.0117 0.0114 Loss Deviation 0.0102 0.0116 0.0113 Downside Deviation (MAR=210%) 0.0142 0.0161 0.0161 Downside Deviation (Rf=0%) 0.0094 0.0113 0.0112 Downside Deviation (0%) 0.0094 0.0113 0.0112 Maximum Drawdown 0.5678 0.6103 0.6219 Historical VaR (95%) -0.0203 -0.0260 -0.0249 Historical ES (95%) -0.0317 -0.0370 -0.0372 Modified VaR (95%) -0.0193 -0.0231 -0.0237 Modified ES (95%) -0.0273 -0.0293 -0.0330
but, let's say I ran the individual example either as an
for loop as part of a broader analytical program - what I would like to do is extract each of the
Historical VaR (95%) figures from the output of the
table.DownsideRisk function as the loop / apply function is running on each element and place those extracted values in a table in the
.GlobalEnv() and then sort that table along the lines of (Low to High)
Historical VaR (95%) SPX.ccl -.0203 SX5E.ccl -.0249 CCMP.ccl -.0260
I know this will seem rather basic to data frame / table users but any assistance is much appreciated.