I have four measurements of variable *y* along axis *x* at 4 *Temperature*s:

```
require(ggplot2)
x <- seq(0, 10, by = 0.1)
y1 <- cos(x)
y2 <- cos(x) + 0.2
y3 <- cos(x) + 0.4
y4 <- cos(x) + 0.8
df.1 <- data.frame(x, y = y1, Name = "df.1", Temperature = 4)
df.2 <- data.frame(x, y = y2, Name = "df.2", Temperature = 3)
df.3 <- data.frame(x, y = y3, Name = "df.3", Temperature = 2)
df.4 <- data.frame(x, y = y4, Name = "df.4", Temperature = 1)
df.merged <- rbind(df.1, df.2, df.3, df.4)
ggplot(df.merged, aes(x, y, color = Name)) + geom_line()
```

All curves have the same x values. What I want is to use a quadratic fit and derive a 5th curve, extrapolated to Temperature = 0.

What I did is the following:

```
require(splines)
quadratic.model <- with(df.merged,
lm(y ~ bs(Temperature, degree = 2)))
result <- predict.lm(quadratic.model, data.frame(x, Temperature = 0))
df.5 <- data.frame(x, y = result, Name = "df.5", Temperature = 0)
df.merged <- rbind(df.1, df.2, df.3, df.4, df.5)
ggplot(df.merged, aes(x, y, color = Name)) + geom_line()
```

Of course, this does not work, as my quadratic model does not take into account the fact that I want to have a fit for each x values. But I have no idea how to do that.

`Temperature`

? – Drey Mar 5 '17 at 10:40`y~bs(x, degree = 2)`

given the training data (df1-4). Then you predict given new data df5. The response from this is a new set of`y`

.s which you can plot. (Unrelated note: bs(Temperature, degree = 2) will be 0 if Temperature is 0 - which it is in df.5. You need to specify your model right.) If you cannot get closer to solution I can later post an possible answer. – Drey Mar 5 '17 at 11:01