I have data structured the following way:

```
group_id, months_from_start, perc_total_downloads, experience_ratio
1 1 1.2 4
1 2 1.7 6
…
235 1 6.7 3
235 2 18 8
…
```

There are about 300 groups, each of which have 70 or so consecutive data elements.

I've issued the following script to estimate a second order polynomial for each of the groups.

```
s.1<-lm(xts(s[s$group_id == 1,][,-2], order.by=as.Date(s[s$group_id == 1,][,2]))$perc_total_downloads ~ poly(xts(s[s$group_id == 1,][,-2], order.by=as.Date(s[s$group_id == 1,][,2]))$months_from_start, 2, raw=TRUE))
s.235<-lm(xts(s[s$group_id == 235,][,-2], order.by=as.Date(s[s$group_id == 235,][,2]))$perc_total_downloads ~ poly(xts(s[s$group_id == 235,][,-2], order.by=as.Date(s[s$group_id == 235,][,2]))$months_from_start, 2, raw=TRUE))
s.599<-lm(xts(s[s$group_id == 599,][,-2], order.by=as.Date(s[s$group_id == 599,][,2]))$perc_total_downloads ~ poly(xts(s[s$group_id == 599,][,-2], order.by=as.Date(s[s$group_id == 599,][,2]))$months_from_start, 2, raw=TRUE))
s.1111<-lm(xts(s[s$group_id == 1111,][,-2], order.by=as.Date(s[s$group_id == 1111,][,2]))$perc_total_downloads ~ poly(xts(s[s$group_id == 1111,][,-2], order.by=as.Date(s[s$group_id == 1111,][,2]))$months_from_start, 2, raw=TRUE))
s.1537<-lm(xts(s[s$group_id == 1537,][,-2], order.by=as.Date(s[s$group_id == 1537,][,2]))$perc_total_downloads ~ poly(xts(s[s$group_id == 1537,][,-2], order.by=as.Date(s[s$group_id == 1537,][,2]))$months_from_start, 2, raw=TRUE))
```

For each one of these new variables I can issue a summary statement to reveal interesting information:

```
> summary(s.44375)
Call:
lm(formula = xts(s[s$group_id == 44375, ][, -2], order.by = as.Date(s[s$group_id ==
44375, ][, 2]))$perc_total_downloads ~ poly(xts(s[s$group_id ==
44375, ][, -2], order.by = as.Date(s[s$group_id == 44375,
][, 2]))$months_from_start, 2, raw = TRUE))
Residuals:
Min 1Q Median 3Q Max
-0.0064004 -0.0017315 -0.0002022 0.0012087 0.0078436
Coefficients: (3 not defined because of singularities)
Estimate Std. Error t value Pr(>|t|)
(Intercept) 1.993e-03 1.137e-03 1.753 0.084 .
poly(xts(s[s$group_id == 44375, ][, -2], order.by = as.Date(s[s$group_id == 44375, ][, 2]))$months_from_start, 2, raw = TRUE)1.0 7.769e-04 6.707e-05 11.583 <2e-16 ***
poly(xts(s[s$group_id == 44375, ][, -2], order.by = as.Date(s[s$group_id == 44375, ][, 2]))$months_from_start, 2, raw = TRUE)2.0 -9.258e-06 8.404e-07 -11.017 <2e-16 ***
poly(xts(s[s$group_id == 44375, ][, -2], order.by = as.Date(s[s$group_id == 44375, ][, 2]))$months_from_start, 2, raw = TRUE)0.1 NA NA NA NA
poly(xts(s[s$group_id == 44375, ][, -2], order.by = as.Date(s[s$group_id == 44375, ][, 2]))$months_from_start, 2, raw = TRUE)1.1 NA NA NA NA
poly(xts(s[s$group_id == 44375, ][, -2], order.by = as.Date(s[s$group_id == 44375, ][, 2]))$months_from_start, 2, raw = TRUE)0.2 NA NA NA NA
---
Signif. codes: 0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1
Residual standard error: 0.002866 on 69 degrees of freedom
Multiple R-squared: 0.6619,Adjusted R-squared: 0.6521
F-statistic: 67.53 on 2 and 69 DF, p-value: < 2.2e-16
```

For my purpose I need to transcribe this information into a table, which is incredibly tedious and time consuming cutting and pasting from this format:

```
group_id intercept est intercept stnd err intercept t value …
44375 1.993e-03 1/137e-03 1.753 ...
…
```

It would also be convenient for me to have conventional notation rather than scientific notation, but I imagine I could live without that.

Is there any way for me to do this without cutting and pasting by hand?

Thanks --sw