Multilayer Perceptrons 1. Overview Recap of neural network theory The multi-layered perceptron ...

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Multilayer Perceptrons 1

Overview

Recap of neural network theory The multi-layered perceptron Back-propagation Introduction to training Uses

Recap

Linear separability

When a neuron learns it is positioning a line so that all points on or above the line give an output of 1 and all points below the line give an output of 0

When there are more than 2 inputs, the pattern space is multi-dimensional, and is divided by a multi-dimensional surface (or hyperplane) rather than a line

Pattern space - linearly separable

X2

X1

Non-linearly separable problems If a problem is not linearly separable,

then it is impossible to divide the pattern space into two regions

A network of neurons is needed

Pattern space - non linearly separable

X2

X1

Decision surface

The multi-layered perceptron (MLP)

The multi-layered perceptron (MLP)Input layer Hidden layer Output layer

Complex decision surface

The MLP has the ability to emulate any function using one hidden layer with a sigmoid function, and a linear output layer

A 3-layered network can therefore produce any complex decision surface

However, the number of neurons in the hidden layer cannot be calculated

Network architecture

All neurons in one layer are connected to all neurons in the next layer

The network is a feedforward network, so all data flows from the input to the output

The architecture of the network shown is described as 3:4:2

All neurons in the hidden and output layers have a bias connection

Input layer

Receives all of the inputs Number of neurons equals the

number of inputs Does no processing Connects to all the neurons in the

hidden layer

Hidden layer

Could be more than one layer, but theory says that only one layer is necessary

The number of neurons is found by experiment

Processes the inputs Connects to all neurons in the output

layer The output is a sigmoid function

Output layer

Produces the final outputs Processes the outputs from the

hidden layer The number of neurons equals the

number of outputs The output could be linear or sigmoid

Problems with networks

Originally the neurons had a hard-limiter on the output

Although an error could be found between the desired output and the actual output, which could be used to adjust the weights in the output layer, there was no way of knowing how to adjust the weights in the hidden layer

The invention of back-propagation By introducing a smoothly changing

output function, it was possible to calculate an error that could be used to adjust the weights in the hidden layer(s)

Output function

The sigmoid function

0

0.2

0.4

0.6

0.8

1

1.2

-5

-4.5 -4

-3.5 -3

-2.5 -2

-1.5 -1

-0.5 -0 0.5 1

1.5 2

2.5 3

3.5 4

4.5 5

net

y

Sigmoid function

The sigmoid function goes smoothly from 0 to 1 as net increases

The value of y when net=0 is 0.5 When net is negative, y is between 0

and 0.5 When net is positive, y is between

0.5 and 1.0

Back-propagation

The method of training is called the back-propagation of errors

The algorithm is an extension of the delta rule, called the generalised delta rule

Generalised delta rule

The equation for the generalised delta rule is ΔWi = ηXiδ

δ is the defined according to which layer is being considered.

For the output layer, δ is y(1-y)(d-y). For the hidden layer δ is a more

complex.

Training a network

Example: The problem could not be implemented on a single layer - nonlinearly separable

A 3 layer MLP was tried with 2 neurons in the hidden layer - which trained

With 1 neuron in the hidden layer it failed to train

The hidden neurons

0

1

2

3

4

5

6

0 1 2 3 4 5 6

Series1

Series2

The weights

The weights for the 2 neurons in the hidden layer are -9, 3.6 and 0.1 and 6.1, 2.2 and -7.8

These weights can be shown in the pattern space as two lines

The lines divide the space into 4 regions

Training and Testing

Starting with a data set, the first step is to divide the data into a training set and a test set

Use the training set to adjust the weights until the error is acceptably low

Test the network using the test set, and see how many it gets right

A better approach

Critics of this standard approach have pointed out that training to a low error can sometimes cause “overfitting”, where the network performs well on the training data but poorly on the test data

The alternative is to divide the data into three sets, the extra one being the validation set

Validation set

During training, the training data is used to adjust the weights

At each iteration, the validation/test data is also passed through the network and the error recorded but the weights are not adjusted

The training stops when the error for the validation/test set starts to increase

Stopping criteria

error

time

Stop here

Validation set

Training set

The multi-layered perceptron (MLP) and Backpropogation

Architecture

Input layer Hidden layer Output layer

Back-propagation

The method of training is called the back-propagation of errors

The algorithm is an extension of the delta rule, called the generalised delta rule

Generalised delta rule

The equation for the generalised delta rule is ΔWi = ηXiδ

δ is the defined according to which layer is being considered.

For the output layer, δ is y(1-y)(d-y). For the hidden layer δ is a more

complex.

Hidden Layer

We have to deal with the error from the output layer being feedback backwards to the hidden layer.

Lets look at example the weight w2(1,2)

Which is the weight connecting neuron 1 in the input layer with neuron 2 in the hidden layer.

Δw2(1,2)=ηX1(1)δ2(2) Where

X1(1) is the output of the neuron 1 in the hidden layer.

δ2(2) is the error on the output of neuron 2 in the hidden layer.

δ2(2)=X2(2)[1-X2(2)]w3(2,1) δ3(1)

δ3(1) = y(1-y)(d-y)=x3(1)[1-x3(1)][d-x3(1)]

So we start with the error at the output and use this result to ripple backwards altering the weights.

Example

Exclusive OR using the network shown earlier: 2:2:1 network

Initial weights W2(0,1)=0.862518, W2(1,1)=-0.155797,

W2(2,1)=0.282885 W2(0,2)=0.834986, w2(1,2)=-0.505997, w2(2,2)=-

0.864449 W3(0,1)=0.036498, w3(1,1)=-0.430437,

w3(2,1)=0.48121

Feedforward – hidden layer (neuron 1)

So if X1(0)=1 (the bias) X1(1)=0 X1(2)=0

The output of weighted sum inside neuron 1 in the hidden layer=0.862518

Then using sigmoid function X2(1)=0.7031864

Feedforward – hidden layer (neuron 2) So if

X1(0)=1 (the bias) X1(1)=0 X1(2)=0

The output of weighted sum inside neuron 2 in the hidden layer=0.834986

Then using sigmoid function X2(2)=0.6974081

Feedforward – output layer So if

X2(0)=1 (the bias) X2(1)=0.7031864 X2(2)=0.6974081

The output of weighted sum inside neuron 2 in the hidden layer=0.0694203

Then using sigmoid function X3(1)=0.5173481 Desired output=0

δ3(1)=x3(1)[1-x3(1)][d-x3(1)] =-0.1291812 δ2(1)=X2(1)[1-X2(1)]w3(1,1)

δ3(1)=0.0116054 δ2(2)=X2(2)[1-X2(2)]w3(2,1) δ3(1)=-

0.0131183

Now we can use the delta rule to calculate the change in the weights

ΔWi = ηXiδ

Examples

If we set η=0.5 ΔW2(0,1) = ηX1(0)δ2(1)

=0.5 x 1 x 0.0116054=0.0058027

ΔW3(2,1) = ηX2(1)δ3(1)=0.5 x 0.7031864 x –

0.1291812=-0.04545192

What would be the results of the following?

ΔW2(2,1) = ηX1(2)δ2(1) ΔW2(2,2) = ηX1(2)δ2(2)

ΔW2(2,1) = ηX1(2)δ2(1)=0.5x0x0.0116054=0

ΔW2(2,2) = ηX1(2)δ2(2)=0.5 x 0 x –0.131183=0

New weights W2(0,1)=0.868321 W2(1,1)=-0.155797

W2(2,1)=0.282885 W2(0,2)=0.828427 w2(1,2)=-0.505997

w2(2,2)=-0.864449 W3(0,1)=0.028093 w3(1,1)=-0.475856

w3(2,1)=0.436164