I'm working with text recognition and currently I'm using support vector machine method. I would like to try with neural network also. I read a few documents about how neural network works, but the theory is quite heavy and I don't know exactly how will it apply to my case. So it would be good if someone can help me to make it clear, especially with the neural network's architecture.
- Currently, in SVM, I have 200 features (divided into 4 main categories), which is used to recognize the text. If I move to neural network, With 200 features, does it mean that I will have 200 neutrons in the input layer?
- With 200 features, how will that result in the architecture of the neural network (in term of numbers layers (hidden layer) and neutrons)?
- In SVM, I have one class classification (basically, true and false) and multi-class classification (labels), how this difference will apply to the output layer of the neural networks?
And I also have a few general questions :
- What will help to decide the number of hidden layers and the number of neutrons inside each hidden layer?
- Does the number of hidden layer relate to the accuracy ?
I'm new to neural network so it would be great if you can explain to me in an understable way. :)
Thank you very much.