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💬 프롬프트 라이브러리 📖 AI 용어 사전 🔗 유용한 링크

AI 용어집

인공지능 완전 사전

162
카테고리
2,032
하위 카테고리
23,060
용어
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Latent Space Conditioning

Technique for injecting conditional variables into the latent space to control the characteristics generated by the CVAE.

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Attribute Control

Mechanism enabling precise manipulation of generated data attributes by modifying the model's input conditions.

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Conditional Prior

Modified prior distribution that depends on conditional variables, enabling guided sampling in the latent space.

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Conditional Posterior

Posterior distribution that incorporates conditional information to infer relevant latent representations.

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Class-Conditional VAE

Specialized variant of the CVAE using class labels as conditioning to generate samples from specific categories.

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Multi-Modal Conditioning

Approach combining multiple types of conditions (text, image, audio) for granular control of generation.

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Conditional Decoder

CVAE component receiving both the latent code and conditions to reconstruct or generate data.

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Conditional Encoder

Neural network integrating conditions during encoding to produce a contextually informed latent representation.

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Disentangled Representation

Latent representation where dimensions are independent and correspond to interpretable variational factors under conditioning.

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Conditional Reconstruction Loss

Loss function measuring reconstruction fidelity while penalizing violations of specified conditions.

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KL Divergence Conditioning

Adaptation of the Kullback-Leibler divergence accounting for conditional distributions in the training objective.

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Conditional Sampling

Sampling technique in the latent space guided by conditions to generate targeted samples.

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Feature Conditioning

Use of continuous or discrete features as conditions to refine control over generation.

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Semi-Supervised CVAE

CVAE extension exploiting both labeled and unlabeled data simultaneously to improve conditional generation.

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Hierarchical CVAE

Multi-level architecture incorporating conditions at different hierarchical scales for refined control.

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Cross-Modal CVAE

Variant allowing conditioning of generation in one modality using information from another modality.

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Adversarial CVAE

Hybridization combining conditional VAEs with adversarial networks to improve the quality of generated samples.

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Conditional Interpolation

Interpolation technique in latent space preserving or gradually modifying specified conditions.

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