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I am trying to write code that checks to see if the 1 value in a df is greater than another value in a different row/column in the same df.

I have the following as a sample:

Date GSPC.Open GSPC.High GSPC.Low GSPC.Close
2014-02-28 2014-02-28   1855.12   1867.92  1847.67    1859.45
2014-02-27 2014-02-27   1844.90   1854.53  1841.13    1854.29
2014-02-26 2014-02-26   1845.79   1852.65  1840.66    1845.16
2014-02-25 2014-02-25   1847.66   1852.91  1840.19    1845.12

I want to create a loop or function that checks to see if GSPC.Open is greater than or equal to the previous day's GSPC.Close. I would imagine the code would look like

if (df$GSPC.Open >= df$GSPC.Close[1]) {
    df$GSPC.AboveOpen = 1
}

but I keep an length > 1 error.

I would like the function to create an column df$GSPC.AboveOpen filled w/ discrete values if the current day's open is greater than or equal to the previous day's close.

How do I write this code?

Thanks!

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2 Answers 2

up vote 1 down vote accepted

I would not advise to use a loop here. You are using a time series - therefore, use appropriate time series methods (such as lag).

This code compares the current day's open with previous day's close and gives 1 if the open is higher (or equal) and 0 otherwise.

library(quantmod)

getSymbols('^GSPC',src='yahoo',from='1990-01-01')

GSPC$AboveOpen<-(GSPC[,"GSPC.Open"]>=lag(GSPC[,"GSPC.Close"],1))

Just in case you also want to deal with single stock data: Keep in mind that .Close and .Open (at least from Yahoo) are not split and dividend adjusted. .Adjusted is the adjusted close.

share|improve this answer
    
thanks @cryo111. Lets suppose I wanted to test for Open in yesterday's range. It looks like the return of 1 or 0 is a part of the lag function. Would the code look something like this? df$OpenInRange <- ((GSPC[,"GSPC.Open"] >= lag(GSPC[,"GSPC.High"]) & GSPC[,"GSPC.Open"] <= lag(GSPC[,"GSPC.Low"]),1)? thanks! –  Blackmarkt Mar 1 at 15:39
    
Actually, in my example above, GSPC[,"GSPC.Open"]>=lag(GSPC[,"GSPC.Close"],1) returns either TRUE or FALSE. This gets automatically converted to 1 and 0 when assigning to GSPC$AboveOpen. The lag function has nothing to do with the comparison (see wikipedia for what the lag operation does). To check whether todays open is in yesterday's hi-lo range use GSPC$OpenInRange<-(GSPC[,"GSPC.Open"]>=lag(GSPC[,"GSPC.Low"],1))&(GSPC[,"GSPC.O‌​pen"]<=lag(GSPC[,"GSPC.High"],1)) –  cryo111 Mar 1 at 17:42
    
Thanks for explaining that @cryo111! Just made things so much simpler & more efficient. –  Blackmarkt Mar 1 at 20:30
    
Glad that it helped! :) –  cryo111 Mar 1 at 21:05

Try this:

df$GreaterThanPreviousClose <- NA

for (i in 2:nrow(df)){
df[i,6] <- df[i,2] >= df[i-1,5]
}

Maybe this will speed it up

compare <- function(i){
 Larger <- df[i,2] >= df[i-1,5]
 return(Larger)
}

df$GreaterThanPreviousClose <- sapply(1:nrow(df),compare)
share|improve this answer
    
Thanks @eclark it worked is there any way you could explain is happening with this code? I have an idea but not sure exactly is going on. It appears you created an empty column first then used a for loop referencing the rows using the function nrow & then doing the calculation using the reference notation [i,column_number]. Any insight would be appreciated! –  Blackmarkt Mar 1 at 6:00
    
Sure. 1)First I created an NA column where I'll fill in with the values. 2) Chose a for loop that goes through each one of the rows in the dataframe starting with row number 2. 3) Do a logical expresion asking if row i column 2 is larger than row i - 1 column 5. 4) Store the result of the the logical expresion (either TRUE or FALSE) to row i column 6 . I'm not sure if that is clear. Let me know –  eclark Mar 1 at 6:14
    
Thanks @eclark! Crystal clear! I have 2 more questions: 1. how can I change the result to be discrete (either a 1 or 2)? 2. this function seems to really take a long time to process. Is that normal? thanks. –  Blackmarkt Mar 1 at 6:14
1  
2) for loops are notoriously slower than vectorized operations so sometimes it can be worth the time writing a function and then applying it using dplyr or plyr package functions. 1) You can change booleans to numeric (0,1) by just doing df$GreaterThanPreviousClose <- as.numeric(df$GreaterThanPreviousClose) but if you want other numbers you can always use and ifelse in the loop df[i,6] <- ifelse(df[i,2] >= df[i-1,5],1,2). –  eclark Mar 1 at 6:25
    
Thanks again @eclark! Hopefully just 1 more question: how can I start at row 1 instead of row 2 in the for loop? –  Blackmarkt Mar 1 at 6:33

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