I have a data set consisting of a dichotomous depending variable (`Y`

) and 12 independent variables (`X1`

to `X12`

) stored in a csv file. Here are the first 5 rows of the data:

```
Y,X1,X2,X3,X4,X5,X6,X7,X8,X9,X10,X11,X12
0,9,3.86,111,126,14,13,1,7,7,0,M,46-50
1,7074,3.88,232,4654,143,349,2,27,18,6,M,25-30
1,5120,27.45,97,2924,298,324,3,56,21,0,M,31-35
1,18656,79.32,408,1648,303,8730,286,294,62,28,M,25-30
0,3869,21.23,260,2164,550,320,3,42,203,3,F,18-24
```

I constructed a logistic regression model from the data using the following code:

```
mydata <- read.csv("data.csv")
mylogit <- glm(Y~X1+X2+X3+X4+X5+X6+X7+X8+X9+X10+X11+X12, data=mydata,
family="binomial")
mysteps <- step(mylogit, Y~X1+X2+X3+X4+X5+X6+X7+X8+X9+X10+X11+X12, data=mydata,
family="binomial")
```

I can obtain the predicted probabilities for each data using the code:

```
theProbs <- fitted(mysteps)
```

Now, I would like to create a classification table--using the first 20 rows of the data table (`mydata`

)--from which I can determine the percentage of the predicted probabilities that actually agree with the data. Note that for the dependent variable (`Y`

), 0 represents probability that is less than 0.5, and 1 represents probability that is greater than 0.5.

I have spent many hour trying to construct the classification without success. I would appreciate it very much if someone suggest code that can help to solve this problem.

`table(theProbs>.5, mydata$Y)`

(it's easy to subset on the first 20 observations)?