I have huge dataset of time series which are represented as vectors (no time labels available), due to some errors in measuring process their lengths (as values from `length()`

show) varies slightly (~10%) but each of them definitively describs time interval of exacly two minutes. I would like to rescale/resize them and then calculate some statistics between them (so I need time series of equal lengths).

I need vary fast approach and linear interpolation is perfectly good choice for me, because speed is more important.

Simple example, rescaling vector of length 5 to vector of length of 10 :

```
input <- 0:4 # should be rescaled/resized into :
output <- c(0, .444, .888, 1.333, 1.777, 2.222, 2.666, 3.111, 3.555, 4)
```

I think that the fastest approach is to create matrix `w`

('w' for weights) which dimensions are : `length(output) x length(input)`

, so `w %*% input gives output(as matrix object)`

, if it is the fastest way, how to create matrices `w`

efficiently ?