I may be able to assist based on @Roland's comments. I think you want plain old ANOVA, which helps determine if factors are important or not. There's no need to factor here, integers or numbers (class: numeric) work fine. I put together the following code as example:

```
#creates df
(df <- data.frame(h=c(1,3,4,0,2, 3),d=c(2*1:3), m=c(-1, 0, 3, 4, 7, 8), y=c(30,28,27,26,22, 21)))
#creates linear model, gives output
(fit<-lm(df$d~ df$h + df$m+ df$y))
#runs ANOVA on linear model
anova(fit)
#creates predictions from lm based on different values of df$h
predict.lm(fit)
```

ANOVA is a special case of a regression. The output will tell you whether or not the factor is significant by the P value.

```
> anova(fit)
Analysis of Variance Table
Response: df$d
Df Sum Sq Mean Sq F value Pr(>F)
df$h 1 13.2923 13.2923 89.5846 0.01098 *
df$m 1 2.2832 2.2832 15.3879 0.05927 .
df$y 1 0.1277 0.1277 0.8608 0.45147
Residuals 2 0.2968 0.1484
```

In this example hours are very highly correlated with your dependent variable days, while months shows the next highest correlation.

Please see the link for a background-

http://www.cookbook-r.com/Statistical_analysis/ANOVA/

FYI - I recommend you include some source code to create your example. In this manner people who attempt to answer your question can all refer to the same example.

FYI2 - I recommend you add the tag "regression"

HTH.

`predict.lm`

? – Roland Jan 31 '13 at 16:18`?predict.lm`

. You are interested in the`newdata`

parameter and will want to study the examples. – Roland Jan 31 '13 at 16:24