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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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Factor Disentanglement

Property where each dimension of the latent space captures a single interpretable and independent feature of the data, enabling granular control over generation.

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Encoder Capacity

Amount of information that the encoder can transmit to the latent space, indirectly controlled by the beta parameter to prevent overfitting.

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Variational Posterior Distribution

Parametric approximation of the true posterior distribution, typically modeled as a diagonal Gaussian whose parameters are learned by the encoder.

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Latent Factors of Variation

Independent dimensions of the latent space corresponding to the fundamental underlying attributes that generated the observed data.

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Isotropic Prior

Standard Gaussian prior distribution (zero mean, unit variance) used in VAEs to regularize the latent space and facilitate sampling.

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Beta Annealing

Training strategy that progressively varies the beta parameter from an initial low value to its target value to improve convergence and disentanglement.

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Disentanglement Coefficient

Quantitative metric evaluating the degree to which each latent dimension captures a unique and independent factor of variation in the learned representations.

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Amortized Variational Encoding

Process where variational inference is performed by a neural network that learns to directly map data to the parameters of the posterior distribution.

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Controlled reconstruction

Beta-VAE's ability to faithfully reconstruct data while maintaining a disentangled latent structure through the trade-off regulated by the beta parameter.

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Latent bias-variance trade-off

Fundamental trade-off in Beta-VAE between the capacity of the latent space (variance) and the regularization constraint (bias) towards a simple distribution.

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Conditional latent generation

Process of generating new data by selectively manipulating dimensions of the disentangled latent space to control desired attributes.

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