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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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용어

TransE

Translation-based embedding model that represents relations as translation operations between entity vectors in the embedding space.

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RotatE

Embedding model using rotations in the complex plane to model different types of symmetric, antisymmetric, and inverse relations.

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ComplEx

Embedding model in the complex space capturing asymmetric relations through complex multiplication of entity vectors.

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DistMult

Simple bilinear model using the diagonal dot product to predict the plausibility of triplets in a knowledge graph.

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RESCAL

Tensorial model factorizing the relation tensor to learn entity embeddings and a relation matrix per relation type.

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ConvE

Embedding model based on 2D convolutional neural networks capturing complex interactions between entities and relations.

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KBAT

Transformer architecture with attention mechanism adapted for knowledge graphs, integrating structural information and semantic content.

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Metapath2Vec

Representation learning algorithm for heterogeneous graphs using metapaths to guide random walks and capture relational semantics.

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Poincaré Embedding

Embedding technique in Poincaré hyperbolic space that naturally preserves hierarchical structures of knowledge graphs.

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Link Prediction in KG

Process of predicting the existence or plausibility of relationships between entities based on vector similarities in the embedding space.

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Entity Alignment

Technique that identifies and matches equivalent entities between different knowledge graphs using their vector embeddings.

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Temporal Knowledge Graph Embedding

Extension of embedding methods that incorporates the temporal dimension to model the dynamic evolution of relationships over time.

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Type-aware Embedding

Embedding approach that integrates entity type information as constraints to improve the quality of vector representations.

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Hole

Circular embedding model using circular convolution (correlation) to capture complex interactions between entities and relationships.

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SimplE

Simple yet effective embedding model that uses inverse embeddings to capture the inversion and composition properties of relationships.

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TuckER

Embedding model based on TuckER tensor decomposition that captures complex interactions between entities and relationships through a core tensor.

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CrossE

Model introducing interaction vectors to capture cross-dependencies between entities and relations in knowledge graphs.

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