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23.060
terimler
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terimler

Post-LN Transformer

Original transformer architecture where layer normalization is applied after the attention and feed-forward layers, requiring more precise learning rate tuning.

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terimler

Gamma and Beta

Learnable parameters of layer normalization allowing respectively to scale and shift the normalized values to preserve the network's representational power.

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terimler

Zero Centering

Process of subtracting the mean of activations in layer normalization to center data around zero, facilitating gradient optimization.

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terimler

Unit Variance

Standardization of activations to have unit variance in layer normalization, ensuring numerical stability and constant gradients across layers.

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terimler

Gradient Stability

Property of layer normalization that maintains stable gradients during backpropagation, avoiding exploding or vanishing gradient problems in deep transformers.

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terimler

Epsilon Parameter

Small constant added to the denominator in layer normalization to prevent division by zero and ensure numerical stability when computing normalized variance.

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terimler

Activation Distribution

Distribution of activation values in a layer that layer normalization maintains constant, facilitating convergence and optimization of transformer networks.

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terimler

Scale Invariance

Property of layer normalization that makes the model insensitive to input scale changes, improving model robustness to data variations.

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terimler

Training Speed

Significant acceleration of transformer training through layer normalization, enabling higher learning rates and faster convergence.

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terimler

Hidden State Normalization

Application of layer normalization to transformer hidden states to maintain stable activations across different encoder and decoder layers.

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