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i have a question how to select certain values from a table. I have a table with times and values and i want to get the row below and after a certain time.


Time   Value
02:51  0.08033405 
05:30  0.43456738 
09:45  0.36052075 
14:02  0.45013807 
18:55  0.05745870
....# and so on

Time is coded as character, but can be formatted. Now i have for example the time "6:15" and want to get the values of the time before and after this time from the table (0.43456738 and 0.36052075). The database is in fact quite huge and i have a lot of time values. Anyone has a nice suggestion how to accomplish this?

thanks Curlew

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If, as you mention in your question, you're getting this data.frame from a database, the most efficient way to get those numbers would be at the database level with a carefully constructed query. –  Justin Jun 8 '12 at 15:56
@Justin Using a NoSQL database do you mean? –  Matt Dowle Jun 8 '12 at 16:21
sql or nosql writing a function or stored procedure that takes a list of times and returns the values nearest those times is probably the most efficient, rather than reading the entire time list into R and doing the munging. Huge is relative, but if the op really means huge, potentially the data will be much to big for R to hold in memory. –  Justin Jun 8 '12 at 16:27
As Justin mentioned huge is indeed relative and i would prefer to do it in r. It is not a everyday routine procedure and i only need to calculate it once. Therefore time shouldn't be this much a problem. –  Curlew Jun 8 '12 at 16:34
Huge data (as @Justin points out) is very subjective. So it would be helpful if you gave us some idea of the magnitude. –  Maiasaura Jun 8 '12 at 16:47

1 Answer 1

up vote 0 down vote accepted
value_before <- example_df[which(example_df$time=="09:45")-1, ]$value
value_after <- example_df[which(example_df$time=="09:45")+1, ]$value

# This could become a function

return_values <- function(df,cutoff) {
value_before <- df[which(df$time==cutoff)-1, ]$value
value_after <- df[which(df$time==cutoff)+1, ]$value
return(list(value_before, value_after))

return_values(exmaple_df, "09:15")

# A solution for a large dataset.

df <- data.frame(time = 1:1000000, value = rnorm(1000000))
# create a couple of offsets
df$nvalue <- c(df$value[2:dim(df)[1]],NA)
df$pvalue <- c(NA,df$value[2:dim(df)[1]])
new_df <- data.table(df)

 time      value     pvalue     nvalue
[1,]   10 -0.8488881 -0.1281219 -0.5741059

> new_df[time==1234]
     time      value   pvalue     nvalue
[1,] 1234 -0.3045015 0.708884 -0.5049194
share|improve this answer
-1 because OP said his data is huge. This answer will be very slow, and reinvents the wheel of several packages that do this op. –  Matt Dowle Jun 8 '12 at 16:18
tested it and it doesn't work like this. "which(df$time==cutoff)" assumes that the exact time is in the database which is not the case. –  Curlew Jun 8 '12 at 16:30
@Curlew xts and data.table both have binary search which is what you want for this. You're looking up a missing value in an ordered key and you have large data => xts or data.table, afaik. Search for LOCF (last observation carried forward). In data.table you need roll=TRUE and which=TRUE to get the prevailing row, then +1 for the row afterwards. Beware I'm biased as I wrote data.table. –  Matt Dowle Jun 8 '12 at 16:30
I've added a solution that will work with very large datasets. You don't have to do an exact match (I just used that since your example was a chr. In the current case, you can test any condition. –  Maiasaura Jun 8 '12 at 16:44
@MatthewDowle I love data.table and use it all the time. Thanks for writing it. –  Maiasaura Jun 8 '12 at 16:48

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