- "Validation performance has increased more than max_fail times since the last time it decreased (when using validation)."
Neural network validation checks net.TrainParam.max_fail <- is a bigger or a smaller number better?
43 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
NightStalker
el 16 de Sept. de 2021
Respondida: pathakunta
el 26 de En. de 2024
While trying to improve my neural network I wondered, whether I should increase or decrease
TrainParam.max_fail
(default value is 6)
Training stops when any of these conditions occurs:
- "Validation performance has increased more than max_fail times since the last time it decreased (when using validation)."
which I interpret as: if validation error decreases more than 6 times -> early stopping
This documentary (https://de.mathworks.com/help/deeplearning/ug/improve-neural-network-generalization-and-avoid-overfitting.html) says:
When the validation error increases for a specified number of iterations (net.trainParam.max_fail), the training is stopped, and the
weights and biases at the minimum of the validation error are returned.
which I interpret as: if validation error increases more than 6 times -> early stopping
So what is the purpose of the net.TrainParam.max_fail?
____________________________________________________________________________________
Second question in the same post:
When my Trainratio/Validationratio/Testratio is 70/25/5.
After how many Train-epochs is there an Validation-Epoch?
Thank you very much in advance!
0 comentarios
Respuesta aceptada
Anshika Chaurasia
el 8 de Oct. de 2021
Hi,
1. Training stops when any of these conditions occurs:
In above lines, "Validation Performance" means validation error. Hence, the interpretation of above line will be:
if validation error increases more than 6 times -> early stopping
To understand the terminology refer to following documents:
2. After each training epoch validation will occur. Or, in an epoch first training will be done then validation.
1 comentario
Más respuestas (3)
pathakunta
el 26 de En. de 2024
1. Training stops when any of these conditions occurs: "Validation performance has increased more than max_fail times since the last time it decreased (when using validation)." In above lines, "Validation Performance" means validation error. Hence, the interpretation of above line will be: if validation error increases more than 6 times -> early stopping To understand the terminology refer to following documents: Calculate network performance - MATLAB perform (mathworks.com) https://www.mathworks.com/help/deeplearning/ug/neural-network-object-properties.html#bss4hk6-52 2. After each training epoch validation will occur. Or, in an epoch first training will be done then validation.
0 comentarios
pathakunta
el 26 de En. de 2024
1. Training stops when any of these conditions occurs: "Validation performance has increased more than max_fail times since the last time it decreased (when using validation)." In above lines, "Validation Performance" means validation error. Hence, the interpretation of above line will be: if validation error increases more than 6 times -> early stopping To understand the terminology refer to following documents: Calculate network performance - MATLAB perform (mathworks.com) https://www.mathworks.com/help/deeplearning/ug/neural-network-object-properties.html#bss4hk6-52 2. After each training epoch validation will occur. Or, in an epoch first training will be done then validation.
0 comentarios
pathakunta
el 26 de En. de 2024
1. Training stops when any of these conditions occurs: "Validation performance has increased more than max_fail times since the last time it decreased (when using validation)." In above lines, "Validation Performance" means validation error. Hence, the interpretation of above line will be: if validation error increases more than 6 times -> early stopping To understand the terminology refer to following documents: Calculate network performance - MATLAB perform (mathworks.com) https://www.mathworks.com/help/deeplearning/ug/neural-network-object-properties.html#bss4hk6-52 2. After each training epoch validation will occur. Or, in an epoch first training will be done then validation.
0 comentarios
Ver también
Categorías
Más información sobre Sequence and Numeric Feature Data Workflows en Help Center y File Exchange.
Productos
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!