Table of Contents

VIII - Neural Networks: Representation

8.1 - Non-linear Hypothesis

8.2 - Neurons and the Brain

8.3 - Model Representation 1

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\[a_1^{(2)} = g(\Theta_{10}^{(1)}x_0+\Theta_{11}^{(1)}x_1+\Theta_{12}^{(1)}x_2+\Theta_{13}^{(1)}x_3)\] \[a_2^{(2)} = g(\Theta_{20}^{(1)}x_0+\Theta_{21}^{(1)}x_1+\Theta_{22}^{(1)}x_2+\Theta_{23}^{(1)}x_3)\] \[a_3^{(2)} = g(\Theta_{30}^{(1)}x_0+\Theta_{31}^{(1)}x_1+\Theta_{32}^{(1)}x_2+\Theta_{33}^{(1)}x_3)\] \[h_\Theta(x) = a_1^{(3)} = g(\Theta_{10}^{(2)}a_0^{(2)}+\Theta_{11}^{(2)}a_1^{(2)}+\Theta_{12}^{(2)}a_2^{(2)}+\Theta_{13}^{(2)}a_3^{(2)})\]

8.4 Model Representation 2

⇒ Neural networks are learning their own features.

8.5 Examples and Intuitions 1

8.6 Examples and Intuitions 2

8.7 Multiclass Classification