DF

```
times a b s ex
1 0 59 140 1e-4 1
2 20 59 140 1e-4 0
3 40 59 140 1e-4 0
4 60 59 140 1e-4 2
5 120 59 140 1e-4 20
6 180 59 140 1e-4 30
7 240 59 140 1e-4 31
8 360 59 140 1e-4 37
9 0 60 140 1e-4 0
10 20 60 140 1e-4 0
11 40 60 140 1e-4 0
12 60 60 140 1e-4 0
13 120 60 140 1e-4 3300
14 180 60 140 1e-4 6600
15 240 60 140 1e-4 7700
16 360 60 140 1e-4 7700
# dput(DF)
structure(list(times = c(0, 20, 40, 60, 120, 180, 240, 360, 0,
20, 40, 60, 120, 180, 240, 360), a = c(59, 59, 59, 59, 59, 59,
59, 59, 60, 60, 60, 60, 60, 60, 60, 60), b = c(140, 140, 140,
140, 140, 140, 140, 140, 140, 140, 140, 140, 140, 140, 140, 140
), s = c(1e-04, 1e-04, 1e-04, 1e-04, 1e-04, 1e-04, 1e-04, 1e-04,
1e-04, 1e-04, 1e-04, 1e-04, 1e-04, 1e-04, 1e-04, 1e-04), ex = c(1,
0, 0, 2, 20, 30, 31, 37, 0, 0, 0, 0, 3300, 6600, 7700, 7700)), .Names = c("times",
"a", "b", "s", "ex"), row.names = c(NA, 16L), class = "data.frame")
```

DF2

```
prime times mean
g1 0 1.0000000
g1 20 0.7202642
g1 40 0.8000305
g1 60 1.7430986
g1 120 16.5172242
g1 180 25.6521268
g1 240 33.9140056
g1 360 34.5735984
#dput(DF2)
structure(list(times = c(0, 20, 40, 60, 120, 180, 240, 360),
mean = c(1, 0.7202642, 0.8000305, 1.7430986, 16.5172242,
25.6521268, 33.9140056, 34.5735984)), .Names = c("times",
"mean"), row.names = c(NA, -8L), class = "data.frame")
```

DF is an example of a larger data frame which actually has hundreds of combinations of the 'a','b', and 's' values which result in different 'ex' values. What I want to do is find the combination of 'a','b', and 's' whose 'ex' values (DF) best fit the 'mean' values (DF2) at equivalent 'times'. This fitting will be a comparison of 8 values at a time (ie, times == c(0,20,40,60,120,180,240,360).

In this example, I would want 59, 140, and 1e-4 for the 'a', 'b', and 's' values, because those 'ex' values (DF) best fit the 'mean' values (DF2).

I would like 'a','b', and 's' values for those values which 'ex' (DF) best fits 'mean' (DF2)

Since I want one possible combination of the 'a','b', and 's' values a linear least squares fit model would be best. I would be comparing 8 values at a time -- where 'times' == 0 - 360. I don't want 'a', 'b', and 's' values which work best for each individual time point. I want 'a', 'b', and 's' values where all 8 'ex' (DF) best fit all 8 'mean' values (DF2) This is where I need help.

I have never used linear least squares fitting, but I assume what I'm trying to do is possible.

```
lm(DF2$mean ~ DF$ex,....) # i'm not sure if I should combine the two
# data frames first then use that as my data argument, then
# where I would include 'times' as the point of comparison,
# if that would be used in subset?
```

`dput(DF)`

and`dput(DF2)`

? That would make them much easier to reproduce – David Robinson Sep 4 '12 at 20:52