# Appropriate data structure for paired data and extension of its functionality

The question hast 2 parts.

1. Which is the data structure in R that allows to store the paired data:

``````0:0
0.5:10
1:20
``````

(Python dictionary `{[0]:0, [0.5]:10, [1]:20}`)

and how to initiate it with one liner? i.e. to couple `seq(0,1,by=0.5)` with `seq(0,10,by=5)` in this data structure

2. Assume I added `0.25` to the list, then I want the weighted average of the neighbor nodes to appear (automatically) in the data set, i.e. the element `0.25:5` and the paired set would be

``````0:0
0.25:5
0.5:10
1:20
``````

If I add the element `0.3`, then it must be paired with `5+(10-5)*(0.3-0.25)/(0.5-0.25)=6` and element `0.3:6` to be added.

How I can create the class with S4 or Reference Class class model where I could put this functionality?

-
lst<-list(); lst[0.5]<-5; lst[0.5] ; result is "list()" and not 5 –  Max Li Jul 5 '12 at 15:56

A two-column data.frame seems appropriate:

``````xy <- data.frame(x = seq(0, 1, by = 0.5), y = seq(0, 20, by = 10))
xy
#     x  y
# 1 0.0  0
# 2 0.5 10
# 3 1.0 20
``````

Then, what you are trying to do is a linear-interpolation, which you can achieve using the `approx` function. For example:

``````approx(xy\$x, xy\$y, xout = 0.3)
# \$x
# [1] 0.3
#
# \$y
# [1] 6
``````

If you want to add that result to the data.frame, you can do something like:

``````xy <- as.data.frame(approx(xy\$x, xy\$y, xout = sort(c(xy\$x, 0.3))))
xy
#     x  y
# 1 0.0  0
# 2 0.3  6
# 3 0.5 10
# 4 1.0 20
``````

which is a bit expensive, especially if you plan to add points one at a time. You could instead add all your points at once since the result is independent of the order in which you add them:

``````add.points <- c(0.25, 0.3)
xy <- as.data.frame(approx(xy\$x, xy\$y, xout = sort(c(xy\$x, add.points))))
xy
#      x  y
# 1 0.00  0
# 2 0.25  5
# 3 0.30  6
# 4 0.50 10
# 5 1.00 20
``````
-

Not really sure what you are getting at but maybe the package `hash` may have what you want

``````library(hash)
h<-hash(keys=seq(0,1,by=0.5),values=seq(0,10,by=5))
h[['0.25']]<-2.5
``````

Probably deals with the first part of your question. http://cran.r-project.org/web/packages/hash/hash.pdf may allude to help on the second.

a similar construct with lists

``````lst<-list()
lst<-seq(0,10,5)
names(lst)<-seq(0,1,0.5)
> lst['0.5']
0.5
5
lst['0.25']<-2.5
``````

for your second part you could construct a simple function to update you hash/list with a new value.

-
I would classify it as a problem or at least as an inconvenience that I have to convert the type in order to access the key, I'm looking for exactly lst[0.5] and not lst['0.5']. "you could construct a simple function to update you hash/list with a new value" - the very question is how to implement it in R –  Max Li Jul 5 '12 at 21:33
I'd like to have a class which has a paired data structure (10% of the wish) and I'd like to implement a method (90% of the wish) "add" (or whatever you call it) in this class that can do this: command "class_instance\$add(0.3)" makes this possible: command "class_instance[0.3]" results in 6. What class_instance[1.7] would be, is not of importance (let's throw the error if we want to add a member which is more than maximal existing key, for example) –  Max Li Jul 5 '12 at 22:50
actually I even reduced the 2nd part of the question to this stackoverflow.com/questions/11353135/… –  Max Li Jul 5 '12 at 22:53
+1 and thanks for the discussion and acceptable solution for the 1-st point –  Max Li Jul 9 '12 at 16:27