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Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
kategori
2.032
subkategori
23.060
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Attention Weights Visualization

Graphical technique representing the numerical attention values between tokens in a sequence, using color or size intensities to quantify importance relationships.

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Heat Maps

Two-dimensional matrix representation where colors encode the intensity of attention weights, allowing quick identification of areas of high attentional concentration.

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Attention Heads Analysis

Comparative study of individual attention patterns in each head of the multi-head mechanism, revealing functional specializations and redundancies between heads.

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Multi-Head Attention Patterns

Simultaneous visualization of different attention mechanisms in a Transformer layer, showing how each head captures distinct types of syntactic or semantic relationships.

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Self-Attention Matrix

Square matrix representing attention weights between all pairs of tokens in the same sequence, where each element (i,j) indicates the influence of token j on token i.

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Cross-Attention Visualization

Graphical representation of attention weights between two different sequences, typically used in encoder-decoder models to visualize source-target alignments.

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Attention Rollout

Recursive propagation method of attention weights through successive layers to calculate the cumulative influence of a token on the model's final predictions.

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Attention Flow

Visualization technique showing how information flows through Transformer layers by tracing attentional influence paths between tokens.

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Gradient-Based Attention

Approach using gradients of the output with respect to attention weights to identify the most relevant contributions to the model's prediction.

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Token-to-Token Attention

Direct visualization of pairwise attention relationships between tokens, allowing identification of local and global dependencies in the input sequence.

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Layer-wise Attention Analysis

Comparative examination of attention patterns across different network depths, revealing the evolution of abstract representations from lower to upper layers.

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Attention Trajectory

Temporal visualization of the evolution of attention weights during inference or training, showing how patterns stabilize or change dynamically.

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Attention Saliency Maps

Heatmaps overlaid on the input text to highlight tokens receiving the most attention, facilitating interpretation of the model's decisions.

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Attention Propagation

Technique tracing how attention signals propagate and amplify through the network, revealing critical paths for decision-making.

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Attention Projection

Dimensional reduction of high-dimensional attention weights to visualizable 2D/3D spaces, using techniques like t-SNE or UMAP to identify clusters of similar patterns.

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Attention Clustering

Automatic grouping of similar attention patterns to identify recurring behaviors or functional specializations in attention mechanisms.

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Attention Pattern Classification

Automatic categorization of types of attention patterns (syntactic, semantic, positional) based on their structural and distributional characteristics.

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