2023-05-23 09:28:54 +01:00
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## Sigmoid
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- Logistic function
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- Normalises
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- Introduces non-linearity
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- Easy to take derivative
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$$\frac d {dx} \sigma(x)=
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\frac d {dx} \left[
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\frac 1 {1+e^{-x}}
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\right]
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=\sigma(x)\cdot(1-\sigma(x))$$
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![[sigmoid.png]]
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### Derivative
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$$y_j(n)=\varphi_j(v_j(n))=
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\frac 1 {1+e^{-v_j(n)}}$$
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$$\frac{\partial y_j(n)}{\partial v_j(n)}=
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\varphi_j'(v_j(n))=
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\frac{e^{-v_j(n)}}{(1+e^{-v_j(n)})^2}=
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y_j(n)(1-y_j(n))$$
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- Nice derivative
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- Max value of $\varphi_j'(v_j(n))$ occurs when $y_j(n)=0.5$
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- Min value of 0 when $y_j=0$ or $1$
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- Initial weights chosen so not saturated at 0 or 1
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If $y=\frac u v$
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Where $u$ and $v$ are differential functions
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$$\frac{dy}{dx}=\frac d {dx}\left(\frac u v\right)$$
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$$\frac{dy}{dx}=
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\frac {v \frac d {dx}(u) - u\frac d {dx}(v)} {v^2}$$
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