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I've got two data frames containing timeseries (with time coded as numeric, rather than time objects; and time is unsorted). I'd like to normalize a response variable in one data frame to a response variable in another data frame. The problem is that the timepoints in the two data frames aren't quite equivalent. So, I'll need to merge the two data frames by the approximate match of the two time columns.

The data look like this:

df1 <- structure(list(t1 = c(3, 1, 2, 4), y1 = c(9, 1, 4, 16)), .Names = c("t1", "y1"), row.names = c(NA, -4L), class = "data.frame")
df2 <- structure(list(t2 = c(0.9, 4.1), y2 = structure(1:2, .Label = c("a", "b"), class = "factor")), .Names = c("t2", "y2"), row.names = c(NA, -2L), class = "data.frame")

The result should look like this:

t1  y1    y2
 1   1    a
 4  16    b

Seems like approx or approxfun would be useful, but I can't quite see how to do it.

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2  
This may work for your example, but not for your problem - but you could always round() both before merging. Although, this can get really tricky if your measurements (a,b) are not mutually exclusive. –  Brandon Bertelsen Oct 16 '12 at 19:49

2 Answers 2

up vote 4 down vote accepted

You can do this easily with na.approx from zoo:

library(zoo)
Data <- merge(df1, df2, by.x="t1", by.y="t2", all=TRUE)
Data$y1 <- na.approx(Data$y1, na.rm=FALSE, rule=2)
na.omit(Data)
#    t1 y1 y2
# 1 0.9  1  a
# 6 4.1 16  b

You could do this with approx too:

Data <- merge(df1, df2, by.x="t1", by.y="t2", all=TRUE)
y1.na <- is.na(Data$y1)
Data$y1[y1.na] <- (approx(Data$y1, rule=2, n=NROW(Data))$y)[y1.na]
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Ooo, +1, "puts in bag of tricks for later" –  Brandon Bertelsen Oct 16 '12 at 19:53

@JoshuaUlrich provided a nice way to do this if you want the final result to include everything from df2 and you don't care if the t1 column has the values from t2.

However, if you wanted to avoid these things and continue in the vein suggested by @BrandonBertelsen, you might define custom round function and then use that on the merge column of the second data.frame. For example:

# define a more precise rounding function that meets your needs.
# e.g., this one rounds values in x to their nearest multiple of h
gen.round <- function(x, h) {
    ifelse(x %% h > (h/2), h + h * (x %/% h), -(h + h * (-x %/% h)))
}

# make a new merge function that uses gen.round to round the merge column 
# in the second data.frame
merge.approx <- function(x, y, by.x, by.y, h, ...) {
    y <- within(y, assign(by.y, gen.round(get(by.y), h)))
    merge(x, y, by.x=by.x, by.y=by.y, ...)
}

merge.approx(df1, df2, by.x='t1', by.y='t2', h =.5)

  t1 y1 y2
1  1  1  a
2  4 16  b
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Trouble is (per @Brandon Bertilsen's guess) my real time values are not necessarily integers. I like this approach, but I'm trying to figure out if it can be modified to 'round' the values of the t2 column to the non-integer values of the t1 column. That would make more intuitive sense to me. –  Drew Steen Oct 16 '12 at 20:48
1  
Yes, it can. The gen.round function defined here rounds to the nearest multiple of h, where h can be anything, e.g., gen.round(1.36, .5) will give you 1.5. –  Matthew Plourde Oct 16 '12 at 20:53

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