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I am trying to train a feedforward network to work to perform an XOR operations with the Ruby Library AI4R. However, when I evaluate for the XOR after training it. I am not getting the correct output. Has anyone used this library before and gotten it to learn the XOR operation.

I am using two input neurons, three neurons in a hidden layer, and one layer for the output, as I saw a precomputed XOR feed forward neural network like this before.

require "rubygems"
require "ai4r"

# Create the network with:
 #   2 inputs
 #   1 hidden layer with 3 neurons
 #   1 outputs
 net = Ai4r::NeuralNetwork::Backpropagation.new([2, 3, 1])  

 example = [[0,0],[0,1],[1,0],[1,1]]
 result = [[0],[1],[1],[0]]

 # Train the network
 400.times do |i|
   j = i % result.length
   puts net.train(example[j], result[j])
 end

 # Use it: Evaluate data with the trained network
puts "evaluate 0,0: #{net.eval([0,0])}"  # =>  evaluate 0,0: 0.507531383375123
puts "evaluate 0,1: #{net.eval([0,1])}"  # =>  evaluate 0,1: 0.491957823618629
puts "evaluate 1,0: #{net.eval([1,0])}"  # =>  evaluate 1,0: 0.516413912471401
puts "evaluate 1,1: #{net.eval([1,1])}"  # =>  evaluate 1,1: 0.500197884691668

Ted

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1 Answer 1

up vote 4 down vote accepted

You haven't trained it for enough iterations. If you change 400.times to 8000.times you'll come much closer (and closer still at 20000.times).

At 20000.times, I get

puts "evaluate 0,0: #{net.eval([0,0])}"  # =>  evaluate 0,0: 0.030879848321403
puts "evaluate 0,1: #{net.eval([0,1])}"  # =>  evaluate 0,1: 0.97105714994505
puts "evaluate 1,0: #{net.eval([1,0])}"  # =>  evaluate 1,0: 0.965055940880282
puts "evaluate 1,1: #{net.eval([1,1])}"  # =>  evaluate 1,1: 0.0268317078331645

You can also increase net.learning_rate (but not too much).

share|improve this answer
    
I wonder why it is so slow. –  Flethuseo Nov 16 '10 at 17:48
    
Hmmm. interesting.. I had tried at most 4000 iterations.. and I had seen a back propagation work quite well with that amount. I didn't bother to try so many iterations :). I notice that it works a bit better with a learning rate of 1. –  Flethuseo Nov 16 '10 at 18:00
    
Just in case someone searches for something similar, I found a bunch of examples for Neural networks and AI stuff in here: gems/ai4r-1.9/examples/ –  Flethuseo Nov 16 '10 at 19:28

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