I'm trying to generate prediction using a trained backpropagation neural network using the neuralnet package on a new data set. I used the 'compute' function but end up with the same value for all observations. What did I do wrong?

```
# the data
Var1 <- runif(50, 0, 100)
sqrt.data <- data.frame(Var1, Sqrt=sqrt(Var1))
# training the model
backnet = neuralnet(Sqrt~Var1, sqrt.data, hidden=2, err.fct="sse", linear.output=FALSE, algorithm="backprop", learningrate=0.01)
print (backnet)
Call: neuralnet(formula = Sqrt ~ Var1, data = sqrt.data, hidden = 2, learningrate = 0.01, algorithm = "backprop", err.fct = "sse", linear.output = FALSE)
1 repetition was calculated.
Error Reached Threshold Steps
1 883.0038185 0.009998448226 5001
valnet = compute(backnet, (1:10)^2)
summary (valnet$net.result)
V1
Min. :0.9998572
1st Qu.:0.9999620
Median :0.9999626
Mean :0.9999505
3rd Qu.:0.9999626
Max. :0.9999626
print (valnet$net.result)
[,1]
[1,] 0.9998572272
[2,] 0.9999477241
[3,] 0.9999617930
[4,] 0.9999625684
[5,] 0.9999625831
[6,] 0.9999625831
[7,] 0.9999625831
[8,] 0.9999625831
[9,] 0.9999625831
[10,] 0.9999625831
```