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Friends, I was trying to learn neural network in R. Can anybody help me to interpret the neural network graph in R? Friends i got this graph Neural Network Graph

Friends please help me to interpret this graph any help will be highly appreciated

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closed as too broad by larsmans, agstudy, Robert Harvey Oct 17 '13 at 15:39

There are either too many possible answers, or good answers would be too long for this format. Please add details to narrow the answer set or to isolate an issue that can be answered in a few paragraphs. If this question can be reworded to fit the rules in the help center, please edit the question.

    
Friend, what exactly do you have problem with? –  BartoszKP Oct 17 '13 at 10:35
    
@BartoszKP- friend i was going through the tutorial of neural network in R . So ran a sample code and got this output, can you help me to interpret this output? –  Ravee Oct 17 '13 at 10:41
    
This is offtopic here. Please vote for questions on this beta site: area51.stackexchange.com/proposals/57719/… - such questions should belong there. –  BartoszKP Oct 17 '13 at 10:54
    
@BartoszKP - ok –  Ravee Oct 17 '13 at 10:56
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I loved the question just not where you asked it. There's an R section (tag it with [r]) in stackechange stats: stats.stackexchange.com –  Tyler Rinker Oct 17 '13 at 12:28

1 Answer 1

up vote 3 down vote accepted

This drawing represents a neural network in the context of the famous Iris dataset. This data set contains four properties of three types of the iris plant. Names of these properties are displayed on the left in the picture you've presented.

The data flows from the left to the right. The attributes (plant's properties) are presented to the input layer (first column of nodes from the left). Each of these values gets multiplied by an appropriate weight an presented to the nodes in the next layer - the hidden layer (middle column of nodes). The hidden layer also gets a bias value input to it (a node with labelled as 1 on the top row, at the left). The bias is needed for the neuron to able to represent any separating hyperplane, not only hyperplanes crossing the origin. For example, in a simplified 2D case and disregarding the activation function, a neural network node without the bias can represent any line of the form:

y = a*x

Where x is the input value, and a is the weight. With bias, it can represent all possible lines:

y = a*x + b*1

1 corresponds to the 1 node in the diagram, and b is its weight (also visible in the diagram).

Exactly the same scenario is repeated for the output layer (the last column of nodes in the picture).

The labels on the right represent class labels which correspond to the names of the classified plants. This structure represents the Winner-take-all (WTA) paradigm. That is, the final decision depends on which of the output neurons has the highest value. For example, if the top output neuron has the output value 0.8, the middle one 0.76 and the bottom gives 0.3 then the decision is that the presented attributes represent the "Iris setosa" class.

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@BartoszKP- Thanks bro –  Ravee Oct 17 '13 at 11:06

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