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Can I make an excel to predict with new input after have a training model ANN (Neural net)
Hi everyone,
I am in a problem to make an excel with the result after running and training model ANN Neural net in rapidminer.
I made an prediction task, using input with many numbers and labels, OUTPUT is a real number (REGRESSTION)
But when the result show the neural net with nodes and theirs weights, i dont know how to make an regresstion calculator by excel.
I see on the internet that when we use this for classifier rapidminer use active function (sigmoid) and when the predict result is regression, rapidminer will use linear .
I also think linear is this: Y (output) = W*x
w is the matrix of weights and x is the matrix of input.
Immo001 had 6 years ago.
Here is what he/she did, same as me:
"
HELP ME ANY BRO?
I am in a problem to make an excel with the result after running and training model ANN Neural net in rapidminer.
I made an prediction task, using input with many numbers and labels, OUTPUT is a real number (REGRESSTION)
But when the result show the neural net with nodes and theirs weights, i dont know how to make an regresstion calculator by excel.
I see on the internet that when we use this for classifier rapidminer use active function (sigmoid) and when the predict result is regression, rapidminer will use linear .
I also think linear is this: Y (output) = W*x
w is the matrix of weights and x is the matrix of input.
Immo001 had 6 years ago.
Here is what he/she did, same as me:
"
My process:
"Data" --> "x-validation"
In the "x-validation" is the "neural net" on the left side (training), "apply model" and "performance" is on the right side (testing).
In the end of x-validation is again "apply model" connected with multiply to the data.
Rapid miner shows in the input layer attribute 1, attribute 2 and a threshold node.
In the hidden layer are three noddes and a threshold node.
There is only one output node.
Descripted Result:
Node 1
1 att. -1.763
2 att. -1.144
Bias
Node 2
1 att. -1.776
2 att. -1.103
Bias -1.178
Node 3
1 att. -1.937
2 att. -1.937
Bias -0.996
Output
1 Node -1.389
2 Node -1.376
3 Node -1.495
Threshold 0.112
Rapid miner gives me also a predicted value for every row.
Now I want to use the first row of my dataset (att. 1 and 2) to recalculate the predicted result.
The Idea is, if i know how to recalculate I can calculate new data. Or use the formula in a Excel sheet. In my exapmle it is the turnover of a neu grocery store.
My calculations (1att. 0.532, 2. att 0.089, the predicted result is 0.341)
Node 1
0.532 * (-1.763) + 0.089 * (-1.144) + (-1.173) = -2,212
after the sigmoid transformation I get 0,098
Node 2
0.532 * (-1.776) + 0.089 * (-1.103) + (-1.178) = -2,220
after the sigmoid transformation I get 0,097
Node 3
0.532 * (-1.937) + 0.089 * (-1.254) + -0.996 = -2,137
after the sigmoid transformation I get 0,105
Then I do the linear regression. Im not sure if it is right. I dont know how to use the threshold value.
0,098 (-1.389)
0,097 (-1.376)
0,105 (-1.495)
I get a correlation coefficient of 0,999
but I expect 0.341 ????
Do you understand my problem?
I hope somebody can help me. If you need detail please ask me.
How can rapid miner predict the turnover of a new grocery store (att. 1+ 2, but without a label/turnover)?
I appreciate your help.
Greeting Immo001
""Data" --> "x-validation"
In the "x-validation" is the "neural net" on the left side (training), "apply model" and "performance" is on the right side (testing).
In the end of x-validation is again "apply model" connected with multiply to the data.
Rapid miner shows in the input layer attribute 1, attribute 2 and a threshold node.
In the hidden layer are three noddes and a threshold node.
There is only one output node.
Descripted Result:
Node 1
1 att. -1.763
2 att. -1.144
Bias
Node 2
1 att. -1.776
2 att. -1.103
Bias -1.178
Node 3
1 att. -1.937
2 att. -1.937
Bias -0.996
Output
1 Node -1.389
2 Node -1.376
3 Node -1.495
Threshold 0.112
Rapid miner gives me also a predicted value for every row.
Now I want to use the first row of my dataset (att. 1 and 2) to recalculate the predicted result.
The Idea is, if i know how to recalculate I can calculate new data. Or use the formula in a Excel sheet. In my exapmle it is the turnover of a neu grocery store.
My calculations (1att. 0.532, 2. att 0.089, the predicted result is 0.341)
Node 1
0.532 * (-1.763) + 0.089 * (-1.144) + (-1.173) = -2,212
after the sigmoid transformation I get 0,098
Node 2
0.532 * (-1.776) + 0.089 * (-1.103) + (-1.178) = -2,220
after the sigmoid transformation I get 0,097
Node 3
0.532 * (-1.937) + 0.089 * (-1.254) + -0.996 = -2,137
after the sigmoid transformation I get 0,105
Then I do the linear regression. Im not sure if it is right. I dont know how to use the threshold value.
0,098 (-1.389)
0,097 (-1.376)
0,105 (-1.495)
I get a correlation coefficient of 0,999
but I expect 0.341 ????
Do you understand my problem?
I hope somebody can help me. If you need detail please ask me.
How can rapid miner predict the turnover of a new grocery store (att. 1+ 2, but without a label/turnover)?
I appreciate your help.
Greeting Immo001
HELP ME ANY BRO?
0