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AI-woordenlijst

Het complete woordenboek van kunstmatige intelligentie

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Position-wise Feed-Forward Network

Neural network applied independently to each position in the sequence in the Transformer architecture, performing nonlinear transformations after the attention mechanism.

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GELU Activation

Gaussian Error Linear Unit activation function used in Transformer FFNs, combining dropout and ReLU properties for stochastic regularization.

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Two-layer MLP

Standard multilayer architecture of FFNs in Transformers consisting of two linear transformations with a nonlinear activation function between them.

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Hidden Dimension Expansion

Dimensionality increase in the first layer of the FFN (typically 4x the model dimension) before reduction in the second layer, allowing more expressive capacity.

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Feed-Forward Dimension

Intermediate dimension of the FFN in Transformers, typically four times larger than the model dimension to increase representation capacity.

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Position-independent Processing

Fundamental feature of FFNs applying the same weights to all positions, unlike the attention mechanism which is position-dependent.

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Swish Activation

Alternative activation function to GELU in FFNs, defined as x * sigmoid(βx), offering comparable performance with better differentiability.

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GLU Variants

Gated Linear Units and their variants (GeGLU, SwiGLU) used as alternatives to standard FFNs, introducing gating mechanisms for selective information flow control.

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Feed-Forward Sublayer

Individual component of the Transformer block containing the FFN, including residual connections and layer normalization to stabilize training.

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Linear Transformation Matrices

Weights W1 and W2 of the FFN transforming respectively to the expanded dimension and returning to the original model dimension.

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FFN Dropout

Regularization mechanism applied after activation in Transformer FFNs, randomly deactivating neurons to prevent overfitting.

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Inner Layer Normalization

Application of layer normalization before or after the FFN in Transformer architecture, with pre-norm and post-norm variants affecting training stability.

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Mixture of Experts FFN

Extension of standard FFNs using multiple FFN experts selectively activated by a routing network, allowing capacity increase without proportional computational increase.

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ReLU-based FFN

FFN variant using ReLU as activation function, simpler but less performant than GELU for most Transformer applications.

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Feed-Forward Projection

Linear projection operation in FFNs transforming representations between spaces of different dimensionalities to capture complex relationships.

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Adaptive FFN

Advanced FFN architecture dynamically adjusting its parameters based on input context, improving flexibility for specific tasks.

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