How to train a Neural Network with an input data set that comprises of numeric values as well as nominal variables (such as the base fluid used which could be either 'Water', 'Oil' or 'Slickwater')?
4 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
Hi, I am trying to model a production data set using neural network. I am using a static 2 -layer feedforward neural network for the same (10 neurons hidden layer, 1 neuron output, dividerand, trainlm, transfer function-logsigmoid for hidden and linear for output).
My input data set comprises of 125 production well. Each well has 9 variables, 6 of which are numeric whereas the rest 3 are nominal variable (like orientation of well which could be north, south, east or west....base fluid used, which could be either of water, oil or slickwater).
When I load this dataset into matlab for training of neural network. It shows error that the input data should either be 'numeric' or 'logical'.
So, firstly is there any way I could train my network simultaneously using a combination of numeric and nominal variables. Secondly, if not is there any way I could rationally code numerical variables into their corresponding numeric values.
Thanks for your help in advance.
2 comentarios
Respuestas (2)
Ahmed
el 19 de Feb. de 2014
Try to code your nominal variables as dummy binary variables, then input that into your neural network.
nomvar = nominal(randi(3,10,1));
dumvar = dummyvar(nomvar),
Iain
el 19 de Feb. de 2014
You could make your non-numeric values into numeric ones by using enumerations.
E.g.
Oil = 1;
Water = 2;
Slickwater = 3;
Thebloodoftheinnocent = 4;
Fluid = Oil;
Also, you could replace the north/south etc, with compass headings. 0 = North, pi = south, etc.
3 comentarios
Greg Heath
el 21 de Feb. de 2014
No. You only assume a numerical order.
Training will find the correct weights.
For example, if you used 1,2,3,10 you should get the same answer because during training, the net will learn to decrease the input weights for variable four by a factor of 2.5
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!