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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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Graph Generative Models

Neural network architecture designed to learn the underlying distribution of graphs and generate new graph structures with properties similar to the training data.

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GraphVAE

Variational Autoencoder adapted for graphs using a continuous latent space to learn a probabilistic distribution on graph structures and enable sampling of new graphs.

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GraphGAN

General Adversarial Network applied to graphs where a generator creates graph structures and a discriminator evaluates their authenticity compared to real graphs.

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GraphRNN

Sequential generative model using recurrent neural networks to generate graphs node by node by modeling the distribution of edge addition sequences.

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Molecular Graph Generation

Specialized application of graph generative models for creating new valid molecular structures with desired chemical properties.

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Graph Autoregressive Models

Generative approach decomposing the joint probability of a graph into a product of conditional probabilities to sequentially generate nodes and edges.

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Graph Flow-based Models

Generative models using bijective transformations to map between the graph space and a simple latent space, enabling exact generation and density estimation.

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Graph Diffusion Models

Generative models that progressively apply noise to training graphs and then learn to reverse this process to generate new graph structures.

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Graph Normalizing Flows

Series of invertible transformations on graphs enabling exact distribution modeling and efficient sampling of new graphs.

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Graph-based VAE

Variational Autoencoder specifically designed to handle the permutation-invariant nature of graphs and their complex topological structure.

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Graph Convolutional Networks for Generation

Use of GNNs as encoders or decoders in generative models to capture structural dependencies during graph generation.

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Graph Attention Networks for Generation

Attention mechanism adapted for graphs to selectively weight the influence of different parts of the graph during the generative process.

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Graph Transformers for Generation

Modified transformer architecture to process graph structures by incorporating structural biases and graph-specific attention mechanisms.

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Graph Reinforcement Learning for Generation

Approach treating graph generation as a sequential decision-making process where an agent learns to build optimal graphs through trials and rewards.

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Graph Energy-based Models

Generative models defining an energy function on graphs where low-energy graphs are more probable, using MCMC-type sampling.

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Graph Implicit Models

Generative models implicitly defining the distribution of graphs without explicit form, using techniques like GANs or score-based models.

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Graph Neural ODEs

Ordinary differential equations applied to graphs to model continuous dynamics in latent space and generate graphs through numerical resolution.

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Graph Variational Inference

Approximate inference technique adapted for graphs to estimate posterior distributions in probabilistic generative graph models.

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Graph Latent Space Models

Representation of graphs in a low-dimensional latent space where distances and geometric relationships encode the topological structure of the original graph.

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Graph Sequential Generation

Generative paradigm that builds graphs step by step, typically by sequentially adding nodes and their connections according to a learned policy.

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