andy
5a592c8c7c
Affected files: .obsidian/graph.json .obsidian/workspace-mobile.json .obsidian/workspace.json STEM/AI/Ethics.md STEM/AI/Neural Networks/Activation Functions.md STEM/AI/Neural Networks/CNN/CNN.md STEM/AI/Neural Networks/Deep Learning.md STEM/AI/Neural Networks/MLP/Back-Propagation.md STEM/AI/Neural Networks/MLP/MLP.md STEM/AI/Neural Networks/Neural Networks.md STEM/AI/Neural Networks/Properties+Capabilities.md STEM/AI/Neural Networks/RNN/LSTM.md STEM/AI/Neural Networks/RNN/RNN.md STEM/AI/Neural Networks/RNN/VQA.md STEM/AI/Neural Networks/SLP/SLP.md STEM/AI/Neural Networks/Training.md STEM/AI/Neural Networks/Transformers/Attention.md STEM/AI/Neural Networks/Transformers/LLM.md STEM/AI/Neural Networks/Transformers/Transformers.md STEM/Signal Proc/System Classes.md STEM/img/back-prop-equations.png STEM/img/back-prop-weight-changes.png STEM/img/back-prop1.png STEM/img/back-prop2.png STEM/img/cnn+lstm.png STEM/img/deep-digit-classification.png STEM/img/deep-loss-function.png STEM/img/llm-family-tree.png STEM/img/lstm-slp.png STEM/img/lstm.png STEM/img/matrix-dot-product.png STEM/img/ml-dl.png STEM/img/photo-tensor.png STEM/img/relu.png STEM/img/rnn-input.png STEM/img/rnn-recurrence.png STEM/img/slp-arch.png STEM/img/threshold-activation.png STEM/img/transformer-arch.png STEM/img/vqa-block.png
115 lines
3.0 KiB
Markdown
115 lines
3.0 KiB
Markdown
Error signal graph
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![[mlp-arch-graph.png]]
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1. Error Signal
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- $e_j(n)=d_j(n)-y_j(n)$
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2. Net Internal Sum
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- $v_j(n)=\sum_{i=0}^mw_{ji}(n)y_i(n)$
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3. Output
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- $y_j(n)=\varphi_j(v_j(n))$
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4. Instantaneous Sum of Squared Errors
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- $\mathfrak{E}(n)=\frac 1 2 \sum_{j\in C}e_j^2(n)$
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- $C$ = o/p layer nodes
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5. Average Squared Error
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- $\mathfrak E_{av}=\frac 1 N\sum_{n=1}^N\mathfrak E (n)$
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$$\frac{\partial\mathfrak E(n)}{\partial w_{ji}(n)}=
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\frac{\partial\mathfrak E(n)}{\partial e_j(n)}
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\frac{\partial e_j(n)}{\partial y_j(n)}
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\frac{\partial y_j(n)}{\partial v_j(n)}
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\frac{\partial v_j(n)}{\partial w_{ji}(n)}
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$$
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#### From 4
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$$\frac{\partial\mathfrak E(n)}{\partial e_j(n)}=
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e_j(n)$$
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#### From 1
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$$\frac{\partial e_j(n)}{\partial y_j(n)}=-1$$
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#### From 3 (note prime)
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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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#### From 2
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$$\frac{\partial v_j(n)}{\partial w_{ji}(n)}=
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y_i(n)$$
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## Composite
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$$\frac{\partial\mathfrak E(n)}{\partial w_{ji}(n)}=
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-e_j(n)\cdot
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\varphi_j'(v_j(n))\cdot
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y_i(n)
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$$
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$$\Delta w_{ji}(n)=
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-\eta\frac{\partial\mathfrak E(n)}{\partial w_{ji}(n)}$$
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$$\Delta w_{ji}(n)=
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\eta\delta_j(n)y_i(n)$$
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## Gradients
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#### Output Local
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$$\delta_j(n)=-\frac{\partial\mathfrak E (n)}{\partial v_j(n)}$$
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$$=-
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\frac{\partial\mathfrak E(n)}{\partial e_j(n)}
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\frac{\partial e_j(n)}{\partial y_j(n)}
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\frac{\partial y_j(n)}{\partial v_j(n)}$$
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$$=
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e_j(n)\cdot
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\varphi_j'(v_j(n))
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$$
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#### Hidden Local
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$$\delta_j(n)=-
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\frac{\partial\mathfrak E (n)}{\partial y_j(n)}
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\frac{\partial y_j(n)}{\partial v_j(n)}$$
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$$=-
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\frac{\partial\mathfrak E (n)}{\partial y_j(n)}
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\cdot
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\varphi_j'(v_j(n))$$
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$$\delta_j(n)=
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\varphi_j'(v_j(n))
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\cdot
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\sum_k \delta_k(n)\cdot w_{kj}(n)$$
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## Weight Correction
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$$\text{weight correction = learning rate $\cdot$ local gradient $\cdot$ input signal of neuron $j$}$$
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$$\Delta w_{ji}(n)=\eta\cdot\delta_j(n)\cdot y_i(n)$$
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- Looking for partial derivative of error with respect to each weight
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- 4 partial derivatives
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1. Sum of squared errors WRT error in one output node
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2. Error WRT output $y$
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3. Output $y$ WRT Pre-activation function sum
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4. Pre-activation function sum WRT weight
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- Other weights constant, goes to zero
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- Leaves just $y_i$
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- Collect 3 boxed terms as delta $j$
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- Local gradient
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- Weight correction can be too slow raw
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- Gets stuck
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- Add momentum
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![[mlp-local-hidden-grad.png]]
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- Nodes further back
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- More complicated
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- Sum of later local gradients multiplied by backward weight (orange)
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- Multiplied by differential of activation function at node
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## Global Minimum
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- Much more complex error surface than least-means-squared
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- No guarantees of convergence
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- Non-linear optimisation
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- Momentum
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- $+\alpha\Delta w_{ji}(n-1), 0\leq|\alpha|<1$
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- Proportional to the change in weights last iteration
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- Can shoot past local minima if descending quickly
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![[mlp-global-minimum.png]]
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![[back-prop1.png]]
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![[back-prop2.png]]
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![[back-prop-equations.png]]
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$w^+_5=w_5-\eta\cdot\frac{\partial E_{total}}{\partial w_5}$
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![[back-prop-weight-changes.png]] |