Setting the Number of Training Samples
By default, all measuring points are used as training sample. You can reduce the number of training samples, e.g. to have test data available for a quality assessment of the model or – in case of a very high number of measuring points – to reduce the duration of the model training.
Proceed as follows.
-
In the ISP view, select Data > Set Number Training Samples.
The "Training Samples" window opens. The current number of training samples is displayed.
-
Do one of the following:
-
In the input field, enter the desired number of training samples.
You have to enter an integer number in [2 .. <n_measuringPoints>]. A sufficiently large number of measuring points should naturally remain for a successful model training.
-
Click Select All to use all measuring points as training data.
-
-
Activate the option for your desired method to select the subsample.
Available methods: Random Selection and
Farthest First.
-
Click OK.
The "Training Samples" window closes. The number of measurement points is updated in the
bottom-right corner of the ISP view.
See also