Transcription of Objectives 4 Perceptron Learning Rule
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Objectives4-1 4 4 Perceptron Learning Rule Objectives4-1 Theory and Examples4-2 Learning Rules4-2 Perceptron Architecture4-3 Single-Neuron Perceptron4-5 Multiple-Neuron Perceptron4-8 Perceptron Learning Rule4-8 Test Problem4-9 Constructing Learning Rules4-10 Unified Learning Rule4-12 Training Multiple-Neuron Perceptrons4-13 Proof of Convergence4-15 Notation4-15 Proof4-16 Limitations4-18 Summary of Results4-20 Solved Problems4-21 Epilogue4-33 Further Reading4-34 Exercises4-36 Objectives One of the questions we raised in Chapter 3 was: How do we determine the weight matrix and bias for Perceptron networks with many inputs, where it is impossible to visualize the decision boundaries? In this chapter we will describe an algorithm for training Perceptron networks, so that they can learn to solve classification problems. We will begin by explaining what a Learning rule is and will then develop the Perceptron Learning rule. We will conclude by discussing the advantages and limitations of the single-layer Perceptron network.
Perceptron Learning Rule Objectives 4-1 Theory and Examples 4-2 Learning Rules 4-2 Perceptron Architecture 4-3 Single-Neuron Perceptron 4-5 Multiple-Neuron Perceptron 4-8 Perceptron Learning Rule 4-8 Test Problem 4-9 Constructing Learning Rules 4-10 Unified Learning Rule 4-12 Training Multiple-Neuron Perceptrons 4-13 Proof of Convergence 4-15 ...
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