# anova function with only 1 model

I am not very clear what anova {stats} with only 1 object does, and how to interpret the result. I know with multiple models, anova compares the models and assess whether or not the new model is different from the previous.

According to R's help page, "When given a single argument it produces a table which tests whether the model terms are significant". What does it mean by the significance of model terms?

I also need to interpret the following:

Given x1 and x2 are both continuous predictors, construct model

lm1 <- lm(y ~ x1 + x2)

then,

anova(lm1) gives:

``````Analysis of Variance Table

Response: y

Df    Sum Sq    Mean Sq F value  Pr(>F)

x1   1 0.0007706 0.00077060  5.8930 0.02243 *

x2   1 0.0008881 0.00088807  6.7913 0.01496 *

Residuals     26 0.0033999 0.00013077
``````

How can I interpret the p value here? What should I do to describe whether or not x1 or x2 significantly contribute to the model?

Thanks in advance.

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## 1 Answer

It simply carries out the analysis of (co)variance, I imagine. Try this:

``````aov.model <- aov(y ~ x1 + x2)
summary(aov.model)
``````

You will get the same results as with

``````anova(lm1)
``````

See the discussion here.

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Thanks for the response. They are the same. However, I noticed that the p-values for summary(lm1) is different from summary(aov.model) or anova(lm1). Which one should I use? How can I interpret each p-value? –  user3156920 Jan 5 at 8:03
I believe the answer to that is here: stats.stackexchange.com/questions/28938/… –  Maxim.K Jan 5 at 15:16
Thanks. That answered all the questions I have. –  user3156920 Jan 6 at 17:53