# R code Quantile Regression Fit Stock data problem

I am trying to implement the Quantreg Quantile Regression function on data I retrieved from Yahoo. It appears I need to perform a procedure on the stock data so that the rq() function can read the data. I am not sure how to do this. My question is how do I transform the stocj data into a format the rq formula will ba able to read. Thanks

``````# Quantile Regression Fit Stock data
# Get Library
library(quantmod)
library(quantreg)

# Get Stock Data
stk1 <- getSymbols("DD",  from="2009-12-31", auto.assign=FALSE)
stk2 <- getSymbols("GE", from="2009-12-31", auto.assign=FALSE)

#median (l1) regression  fit for the stock data.
rq(stk1 ~ stk2.x,.5)

#the 1st quartile,
rq(stk1 ~ stk2.x,.25)

#note that 8 of the 21 points lie exactly on this plane in 4-space!
#this returns the full rq process
rq(stk1 ~ stk2.x, tau=-1)

#ordinary sample median --no rank inversion ci
rq(rnorm(50) ~ 1, ci=FALSE)

#weighted sample median
rq(rnorm(50) ~ 1, weights=runif(50),ci=FALSE)
``````
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I've edited your original Q. When writing code, select it and click the button that looks like `101`. `#` are normally used for headers in normal markdown here. Can you delete your answer below as the Q has been updated to match. –  Gavin Simpson Dec 4 '10 at 9:39
also, what is `skt2.x`, yuo don't define it anywhere. Should it not be `skt2`? –  Gavin Simpson Dec 4 '10 at 9:40
interesting question would be also 'why do you want to use Quantreg Quantile Regression' in the first place. Like you know that it is the best solution to your problem, or maybe some other reason? –  mrsteve Dec 5 '10 at 7:16

I made a mistake in posting the code. It should be stk1 and stk2

``````# Get Library

library(quantmod)
library(quantreg)

# Get Stock Data

stk1 <- getSymbols("DD",  from="2009-12-31", auto.assign=FALSE)
stk2 <- getSymbols("GE",  from="2009-12-31", auto.assign=FALSE)

#median (l1) regression  fit for the stock data.

rq(stk1 ~ stk2.x,.5)

#the 1st quartile,

rq(stk1 ~ stk2.x,.25)

#note that 8 of the 21 points lie exactly on this plane in 4-space!
#this returns the full rq process

rq(stk1 ~ stk2.x, tau=-1)

#ordinary sample median --no rank inversion ci

rq(rnorm(50) ~ 1, ci=FALSE)

#weighted sample median

rq(rnorm(50) ~ 1, weights=runif(50),ci=FALSE)
``````
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Mark the region and click the '101010' button to typeset as code. –  Dirk Eddelbuettel Dec 4 '10 at 15:38