regression homework in R

I have a data set labeled bond for different cities: \$y\$=bond yield, \$x_1\$=offer size (\$\\$\$1000 bonds) and \$x_2\$=term of maturity (100's of months). I need to compare coefficients for all models \$y=b_0+b_2x_2\$, \$y=c_0+c_1x_1+c_2x_2\$ and \$y=d_0+d_1x_1\$.

I was able to do the first model but I get errors for the other two. This is the values of the first six cities.

``````> head(bond)
N0       City X1   X2   Y
1  1 Birmingham 30 1.81 335
2  2     Oxnard 10 1.93 365
3  3    Salinas 30 2.79 315
4  4    Danbury 15 1.81 325
5  5  New Haven 15 1.87 283
6  6    Norwalk 40 2.17 300
``````

the linear model2 was `c <- lm(y ~ X1 + X2, bond)` which yielded

``````Error in model.frame.default(formula = y ~ X1 + X2, data = bond, drop.unused.levels = TRUE) :
variable lengths differ (found for 'X1')
``````

and the last model was `d <- lm(y ~ X1, bond)` which resulted in

``````Error in model.frame.default(formula = y ~ X1, data = bond, drop.unused.levels = TRUE) :
variable lengths differ (found for 'X1')
``````

Question: I dont understand the error or how to proceed to correct it.

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Have you checked for missing value in \$y\$, \$x_1\$, and \$x_2\$? –  Max Dec 1 '12 at 23:15
yes, each column has a value in y,x1 and x2 –  mark Dec 1 '12 at 23:20
@mark. This looks like an R question rather than a stats question, and as such would go on stackoverflow with an '[r]' tag. –  Glen_b Dec 1 '12 at 23:23

migrated from stats.stackexchange.comDec 2 '12 at 11:46

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The function `ls()` can sometimes help you find extra variables with similar names that you might accidentally use. You can always `rm` any you don't need. Unless you're pretty disciplined about your use of variables, clearing out your workspace each time before starting work is often a good idea.