Relation between input data points and hyper parameters that needs to be tuned
2 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
Venkat
el 9 de Ag. de 2018
Comentada: Venkat
el 19 de Ag. de 2018
Hi All,
Can anyone please let me know the relationship between the number of input data points and the hyperparameters/number of layers that needs to be present in any machine learning model?
Thanks for your time and help
1 comentario
Respuesta aceptada
Greg Heath
el 9 de Ag. de 2018
Editada: Greg Heath
el 9 de Ag. de 2018
[ I N] = size(input)
[ O N ] = size(target)
% (MATLAB DEFAULT)
Ntst = round(0.15*N)
Nval = Ntst
Ntrn = N-(Ntst+Nval)% ~ 0.7*N
% Design parameters
Ndes = Ntrn*O % No. of design equations ~ 0.7*N*O
H % No. of hidden nodes for I-H-O net
Nw = (I+1)*H+(H+1)*O % No. of unknown weights
Require Ndes >= Nw ==> H <= Hub = (Ntrn*O-O)/(I+O+1)
Desire Ndes >> Nw ==> H << Hub
My typical goal: Minimize H subject to the requirement
MSE < = 0.01*var(target',1) % Rsquare >= 0.99
My approach:
1. Apply the requirement to the training data
2. Loop over H to find the minimum H to satisfy the
requirement.
I have hundreds of examples in the NEWSGROUP comp.soft-sys.matlab as well as ANSWERS.
Hope this helps
Thank you for formally accepting my answer
Greg
Más respuestas (1)
Greg Heath
el 11 de Ag. de 2018
Each case is different. However, things tend to be relatively straightforward if you have at least as many training equations as you have unknowns.
Ver también
Categorías
Más información sobre Get Started with Statistics and Machine Learning Toolbox en Help Center y File Exchange.
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!