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I am using a NN with activation function:

F = 1 / ( 1 + e^(-4.9*S) )
S is the sum of inputs

the network has 1 output node and is interpreted as states of a motor
the motor has 3 states: 1-clockwise motion 2-counterclockwise motion 3-locked

the question is how should i interpret the output? is it correct to say for example:

  • if ( output > 0.8 ) then clockwise motion
  • if ( 0.2 > output < 0.8 ) then locked
  • if ( output < 0.2 ) then counterclockwise motion

i mean is it correct to interpret the output as it has 3 states? does a single node have the power to have 3 states? or i must have 3 different nodes for 3 states?

another way to ask this: does the value between 0.2 and 0.8 mean anything or it is just undecided?

another related question: can a single output node mean degrees of a motor? for example 0->0 degress 0.5->180 degress 1->360 degress ...

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That depends entirely on your neural network. For that one you described, I would say that it could represent the middle state, or it could represent 'confused neural network'.

Thus, I would recommend having three outputs. If, for whatever reason, none of them fire, or more than one fires, you know something is broken.

Yes, you could have a neural network output a continuous variable, but it would require somewhat careful tuning, and probably a linear activation function for at least the last layer.

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so you say theoretically there is no problem to interpret the output as 3 states or even more, but it is difficult for the network to handle it... am i correct? any examples someone did this before? – Arin Aivazian Sep 17 '12 at 17:57
1  
Basically yes. In theory, the network should be able to do it. In practice making it work is harder, possibly will require a larger network, and it is more difficult to tell if something is broken. – zebediah49 Sep 17 '12 at 18:02
    
thanks for your answer, please mention a reference talking about this issue if you know any, it will be very helpful – Arin Aivazian Sep 17 '12 at 18:10
    
tamut.edu/cil/multi-valuedneurons.htm should give you some introduction and links to various articles about multi-valued neurons. – zebediah49 Sep 17 '12 at 18:19

I agree (with zabediah49) that it sounds more sensible with three outputs, one for each state. If the states are mutually exclusive, and it sounds like they are, I even would even consider to have a softmax output instead of sigmoid.

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thx for the answer, but the main question is can I interpret my NN's output which has a sigmoid activation function like I asked or not. I can't change my network structure( at least now! ) – Arin Aivazian Sep 18 '12 at 13:57

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