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terdon
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I have inferred a confusion matrix of training and test set by neuronalneural network. I want to know which members are in the confusion matrix.

> table(test$TRG,predicted.nn.values$net.result)
   
    0 1
  0 5 4
  1 5 3
> 

> head(train[,1:4])
  TRG      ALB     AQP9   CALML5
1   1 5.865827 8.190945 6.705303
2   1 6.998435 8.424261 8.505591
3   1 7.424512 8.716471 7.249556
4   1 7.442049 8.325263 8.809286
6   1 5.893411 8.199990 6.677618
7   1 7.288030 9.143510 7.088598
> 

> head(test[,1:4])
   TRG      ALB     AQP9    CALML5
5    1 6.369307 7.954310  6.920290
8    1 6.181902 8.651442  7.225389
10   1 6.119359 9.345270  6.829623
13   1 7.775533 9.016272  7.976813
14   1 5.913656 9.484457 10.609013
18   1 6.603138 7.908560  8.827173
> 

How can I could know which patintspatients are false positive or true negative? For example I have 5 patients predicted correctly, how can I know the name of these patients?

I have inferred a confusion matrix of training and test set by neuronal network. I want to know which members are in confusion matrix

> table(test$TRG,predicted.nn.values$net.result)
   
    0 1
  0 5 4
  1 5 3
> 

> head(train[,1:4])
  TRG      ALB     AQP9   CALML5
1   1 5.865827 8.190945 6.705303
2   1 6.998435 8.424261 8.505591
3   1 7.424512 8.716471 7.249556
4   1 7.442049 8.325263 8.809286
6   1 5.893411 8.199990 6.677618
7   1 7.288030 9.143510 7.088598
> 

> head(test[,1:4])
   TRG      ALB     AQP9    CALML5
5    1 6.369307 7.954310  6.920290
8    1 6.181902 8.651442  7.225389
10   1 6.119359 9.345270  6.829623
13   1 7.775533 9.016272  7.976813
14   1 5.913656 9.484457 10.609013
18   1 6.603138 7.908560  8.827173
> 

How I could know which patints are false positive or true negative? For example I have 5 patients predicted correctly, how I know the name of these patients?

I have inferred a confusion matrix of training and test set by neural network. I want to know which members are in the confusion matrix.

> table(test$TRG,predicted.nn.values$net.result)
   
    0 1
  0 5 4
  1 5 3
> 

> head(train[,1:4])
  TRG      ALB     AQP9   CALML5
1   1 5.865827 8.190945 6.705303
2   1 6.998435 8.424261 8.505591
3   1 7.424512 8.716471 7.249556
4   1 7.442049 8.325263 8.809286
6   1 5.893411 8.199990 6.677618
7   1 7.288030 9.143510 7.088598
> 

> head(test[,1:4])
   TRG      ALB     AQP9    CALML5
5    1 6.369307 7.954310  6.920290
8    1 6.181902 8.651442  7.225389
10   1 6.119359 9.345270  6.829623
13   1 7.775533 9.016272  7.976813
14   1 5.913656 9.484457 10.609013
18   1 6.603138 7.908560  8.827173
> 

How can I know which patients are false positive or true negative? For example I have 5 patients predicted correctly, how can I know the name of these patients?

Source Link
Zizogolu
  • 2.2k
  • 1
  • 14
  • 46

Finding the members in a confusion matrix

I have inferred a confusion matrix of training and test set by neuronal network. I want to know which members are in confusion matrix

> table(test$TRG,predicted.nn.values$net.result)
   
    0 1
  0 5 4
  1 5 3
> 

> head(train[,1:4])
  TRG      ALB     AQP9   CALML5
1   1 5.865827 8.190945 6.705303
2   1 6.998435 8.424261 8.505591
3   1 7.424512 8.716471 7.249556
4   1 7.442049 8.325263 8.809286
6   1 5.893411 8.199990 6.677618
7   1 7.288030 9.143510 7.088598
> 

> head(test[,1:4])
   TRG      ALB     AQP9    CALML5
5    1 6.369307 7.954310  6.920290
8    1 6.181902 8.651442  7.225389
10   1 6.119359 9.345270  6.829623
13   1 7.775533 9.016272  7.976813
14   1 5.913656 9.484457 10.609013
18   1 6.603138 7.908560  8.827173
> 

How I could know which patints are false positive or true negative? For example I have 5 patients predicted correctly, how I know the name of these patients?