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Neural N etwork

Neural N etwork. Contents. Diagram of a Neuron The Simple Perceptron Multilayer Neural Network What is Hidden Layer? Why do we Need a Hidden Layer? How do Multilayer Neural Networks Learn?. Weight. Output Signals. Input signals. w 1. x 1. w 2. Neuron. Y. x 2. w n. x 3.

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Neural N etwork

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  1. Neural Network

  2. Contents • Diagram of a Neuron • The Simple Perceptron • Multilayer Neural Network • What is Hidden Layer? • Why do we Need a Hidden Layer? • How do Multilayer Neural Networks Learn?

  3. Weight Output Signals Input signals w1 x1 w2 Neuron Y x2 . . . wn x3 Diagram of a Neuron

  4. Hard Limiter Linear Combiner w1 Y-output Σ w2 Th Threshold Example of NN: The Perceptron • Single neuron with adjustable synaptic weight and a hard limiter. x1 x2 • Step & sign activation function called hard limit functions.

  5. Multilayer Neural Network • A multilayer Perceptronis a feedforward network with one or more hidden layers • The network consists of: • an input layer of source neurons, • at least one middle or hidden layer of computation neurons • An output layer of computation neurons • The input signals are propagated in a forward direction on a layer-by-layer basis

  6. Multilayer Perceptron with two Hidden Layers

  7. What is Hidden Layer? • A hidden layer hides its desired output • Neurons in the hidden layer cannot be observed through the input/output behavior of the network. • There is no obvious way to know what the desired output of the hidden layer should be.

  8. Why do we Need a Hidden Layer? • The input layer accepts input signals from the outside world and redistributes these signals to all neurons in the hidden layer. • Neuron in the hidden layer detect the features; the weights of the neurons represent the features hidden in the input patterns. • The output layer accepts output signal from the hidden layer and establishes the output pattern of the entire network.

  9. How Do Multilayer Neural Networks Learn? • Most popular method of learning is back-propagation. • Learning in a multi-layer network proceeds the same way as for a Perceptron • A training set of input patterns is presented to the network • The network computes the output pattern. • If there is an error, the weight are adjusted to reduce this error. • In multilayer network, there are many weights, each of which contributes to more than one output.

  10. Back Propagation Neural Network (1/2) • A back-propagation network is a multilayer network that has three or four layers. • The layers are fully connected, i.e, every neuron in each layer is connected to every other neuron in the adjacent forward layer • A neuron determines its output in a manner similar to Rosenblatt’s Perceptron.

  11. Back Propagation Neural Network (2/2) • The net weighted input value is passed through the activation function. • Unlike a Perceptron, neuron in the back propagation network use a sigmoid activation function:

  12. Three-layer Back Propagation Neural Network

  13. Learning Law Used in Back- Propagation Network • In three layer network, i,j and k refer to neurons in the input, hidden and output layers. • Input signal x1, x2, …….. xnare propagated through the network from left to right • Error signals e1, e2, en from right to left. • The symbol Wij denotes the weight for the connection between neuron i in the input layer and neuron j in the hidden layer • The symbol Wjk denotes the weight for the connection between neuron j in the hidden layer and neuron k in the output layer

  14. Learning Law Used in Back- Propagation Network • The error signal at the output of neuron k at iteration p is defined by, • The updated weight at the output layer is defined by,

  15. Learning Law Used in Back- Propagation Network • The error gradient is determined as the derivative of the activation function multiplied by the error at the neuron output, • Where yk(p) is the output of neuron k at iteration p and xk(p) is the net weighted input to neuron k,

  16. Learning Law Used in Back- Propagation Network • The weight correction for the hidden layer,

  17. Back Propagation Training Algorithm • Initialization : Set all the weights and threshold levels of the network to random numbers uniformly distributed inside a small range (Haykin 1994): (-2.4/Fi, +2.4/Fi), Where Fi is the total number of inputs of neuron i in the network. • Activation: • Calculate the actual outputs of the neurons in the hidden layer • Calculate the actual outputs of the neurons in the output layer • Weight Training: Update the weights in the back-propagation network propagating backward the errors associated with output neurons. • Iteration: Increase iteration p by one, go back to step 2 and repeat the process until the selected error criterion is satisfied.

  18. Back-propagation: Activation (A) Calculate the actual outputs of the neurons in the hidden layer (B) Calculate the actual outputs of the neurons in the output layer

  19. Back-propagation: Weight Training (A) Calculate the error gradient for the neurons in the output layer.

  20. Back-propagation: Weight Training (B) Calculate the error gradient for the neurons in the hidden layer.

  21. Recommended Textbooks • [Negnevitsky, 2001] M. Negnevitsky “ Artificial Intelligence: A guide to Intelligent Systems”, Pearson Education Limited, England, 2002. • [Russel, 2003] S. Russell and P. Norvig Artificial Intelligence: A Modern Approach Prentice Hall, 2003, Second Edition • [Patterson, 1990] D. W. Patterson, “Introduction to Artificial Intelligence and Expert Systems”, Prentice-Hall Inc., Englewood Cliffs, N.J, USA, 1990. • [Minsky, 1974] M. Minsky “A Framework for Representing Knowledge”, MIT-AI Laboratory Memo 306, 1974.

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