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YZ Sözlüğü

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23.060
terimler
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terimler

Co-attention Mechanism

Bidirectional attention architecture where two modalities attend to each other simultaneously, enabling symmetrical interaction and cross-understanding of information.

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Fusion Attention

Attention technique that dynamically combines representations from different modalities by learning contextual fusion weights for each data point.

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Self-Attention Multimodal

Mechanism where each element in a modality calculates its relative importance compared to all other elements, including those from other modalities in the joint space.

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Bilinear Attention

Attention method using bilinear transformations to model complex interactions between modality pairs and capture non-linear relationships.

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Attention Alignment

Process of semantic alignment between segments of different modalities using attention maps to identify spatial or temporal correspondences.

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Modality-specific Attention

Attention mechanism tailored to the intrinsic characteristics of each modality, using distinct parameters to optimize information selection according to data type.

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Dynamic Attention Weighting

System for automatically adjusting attention weights in real-time based on contextual relevance and confidence of multimodal information for each input.

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Multi-head Cross-modal Attention

Extension of multi-head attention where each head specializes in capturing different types of intermodal relationships for a richer and more diverse representation.

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Attention Bottleneck

Attention layer that forces selective compression of multimodal information into a fixed-dimensional vector, preserving only the most relevant features.

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Gated Multimodal Attention

Mechanism using learned gates to selectively control information flow between modalities, enabling fine regulation of multimodal integration.

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Adaptive Attention Networks

Neural networks that dynamically adjust their attention strategy based on the quality and availability of information from each modality.

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Attention Fusion Layer

Specialized layer that combines outputs from multiple multimodal attention mechanisms using learned weights to optimize the final representation.

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Sparse Cross-modal Attention

Cross-modal attention variant that focuses only on the most relevant feature subsets, reducing computational complexity while preserving important relationships.

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Temporal Multimodal Attention

Attention mechanism specialized in modeling temporal dependencies between synchronized or unsynchronized modalities in sequential data.

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Attention-guided Feature Selection

Process where attention weights serve as a guide to dynamically select the most informative features from each modality before fusion.

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